SlideShare une entreprise Scribd logo
1  sur  14
Télécharger pour lire hors ligne
Day 1 Lecture 3
Deep Networks
Elisa Sayrol
[course site]
From Neurons to Convolutional Neural Networks
Figures Credit: Hugo Laroche NN course
2
From Neurons to Convolutional Neural Networks
Figure Credit: Hugo Laroche NN course
Hidden pre-activation
Hidden activation
Output activation
g(x) activation function:
sigmoid:
tangh:
ReLU:
o(x) output activation function:
Softmax:
3
From Neurons to Convolutional Neural Networks
L Hidden Layers
Hidden pre-activation (k>0)
Hidden activation (k=1,…L)
Output activation (k=L+1)
Slide Credit: Hugo Laroche NN course 4
From Neurons to Convolutional Neural Networks
What if the input is all the
pixels within an image?
5
From Neurons to Convolutional Neural Networks
For a 200x200 image,
we have 4x104
neurons
each one with 4x104
inputs, that is 16x108
parameters, only for one
layer!!!
Figure Credit: Ranzatto 6
From Neurons to Convolutional Neural Networks
For a 200x200 image, we
have 4x104
neurons each one
with 10x10 “local
connections” (also called
receptive field) inputs, that is
4x106
What else can we do to
reduce the number of
parameters?
Figure Credit: Ranzatto 7
From Neurons to Convolutional Neural Networks
Translation invariance: we can use same
parameters to capture a specific “feature” in any
area of the image. We can try different sets of
parameters to capture different features.
These operations are equivalent to perform
convolutions with different filters.
Ex: With100 different filters (or feature extractors)
of size 10x10, the number of parameters is 104
That is why they are called Convolutional
Neural Networks, ( ConvNets or CNNs)
Figure Credit: Ranzatto 8
From Neurons to Convolutional Neural Networks
…and don’t forget the activation function!
Figure Credit: Ranzatto
ReLu PReLu
9
From Neurons to Convolutional Neural Networks
Most ConvNets use Pooling
(or subsampling) to reduce
dimensionality and provide
invariance to small local
changes.
Pooling options:
• Max
• Average
• Stochastic pooling
Figure Credit: Ranzatto 10
From Neurons to Convolutional Neural Networks
Padding (P): When doing the
convolution in the borders, you may
add values to compute the
convolution.
When the values are zero, that is
quite common, the technique is called
zero-padding.
When padding is not used the output
size is reduced.
FxF=3x3
11
From Neurons to Convolutional Neural Networks
Padding (P): When doing the
convolution in the borders, you may
add values to compute the
convolution.
When the values are zero, that is
quite common, the technique is called
zero-padding.
When padding is not used the output
size is reduced.
FxF=5x5
12
From Neurons to Convolutional Neural Networks
Stride (S): When doing the
convolution or another operation, like
pooling, we may decide to slide not
pixel by pixel but every 2 or more
pixels. The number of pixels that we
skip is the value of the stride.
It might be used to reduce the
dimensionality of the output
13
From Neurons to Convolutional Neural Networks
Example: Most convnets contain several convolutional layers, interspersed with
pooling layers, and followed by a small number of fully connected layers
A layer is characterized by its width, height and depth (that is, the number of
filters used to generate the feature maps)
An architecture is characterized by the number of layers
LeNet-5 From Lecun ´98
14

Contenu connexe

Tendances

Convolutional Neural Networks (D1L3 2017 UPC Deep Learning for Computer Vision)
Convolutional Neural Networks (D1L3 2017 UPC Deep Learning for Computer Vision)Convolutional Neural Networks (D1L3 2017 UPC Deep Learning for Computer Vision)
Convolutional Neural Networks (D1L3 2017 UPC Deep Learning for Computer Vision)Universitat Politècnica de Catalunya
 
Deep Learning for Computer Vision: Transfer Learning and Domain Adaptation (U...
Deep Learning for Computer Vision: Transfer Learning and Domain Adaptation (U...Deep Learning for Computer Vision: Transfer Learning and Domain Adaptation (U...
Deep Learning for Computer Vision: Transfer Learning and Domain Adaptation (U...Universitat Politècnica de Catalunya
 
Joint unsupervised learning of deep representations and image clusters
Joint unsupervised learning of deep representations and image clustersJoint unsupervised learning of deep representations and image clusters
Joint unsupervised learning of deep representations and image clustersUniversitat Politècnica de Catalunya
 
Optimizing Deep Networks (D1L6 Insight@DCU Machine Learning Workshop 2017)
Optimizing Deep Networks (D1L6 Insight@DCU Machine Learning Workshop 2017)Optimizing Deep Networks (D1L6 Insight@DCU Machine Learning Workshop 2017)
Optimizing Deep Networks (D1L6 Insight@DCU Machine Learning Workshop 2017)Universitat Politècnica de Catalunya
 
Optimization for Deep Networks (D2L1 2017 UPC Deep Learning for Computer Vision)
Optimization for Deep Networks (D2L1 2017 UPC Deep Learning for Computer Vision)Optimization for Deep Networks (D2L1 2017 UPC Deep Learning for Computer Vision)
Optimization for Deep Networks (D2L1 2017 UPC Deep Learning for Computer Vision)Universitat Politècnica de Catalunya
 
Generative Models and Adversarial Training (D2L3 Insight@DCU Machine Learning...
Generative Models and Adversarial Training (D2L3 Insight@DCU Machine Learning...Generative Models and Adversarial Training (D2L3 Insight@DCU Machine Learning...
Generative Models and Adversarial Training (D2L3 Insight@DCU Machine Learning...Universitat Politècnica de Catalunya
 
Training Deep Networks with Backprop (D1L4 Insight@DCU Machine Learning Works...
Training Deep Networks with Backprop (D1L4 Insight@DCU Machine Learning Works...Training Deep Networks with Backprop (D1L4 Insight@DCU Machine Learning Works...
Training Deep Networks with Backprop (D1L4 Insight@DCU Machine Learning Works...Universitat Politècnica de Catalunya
 
Convolutional Neural Networks (DLAI D5L1 2017 UPC Deep Learning for Artificia...
Convolutional Neural Networks (DLAI D5L1 2017 UPC Deep Learning for Artificia...Convolutional Neural Networks (DLAI D5L1 2017 UPC Deep Learning for Artificia...
Convolutional Neural Networks (DLAI D5L1 2017 UPC Deep Learning for Artificia...Universitat Politècnica de Catalunya
 
Deep Neural Networks (D1L2 Insight@DCU Machine Learning Workshop 2017)
Deep Neural Networks (D1L2 Insight@DCU Machine Learning Workshop 2017)Deep Neural Networks (D1L2 Insight@DCU Machine Learning Workshop 2017)
Deep Neural Networks (D1L2 Insight@DCU Machine Learning Workshop 2017)Universitat Politècnica de Catalunya
 
Transfer Learning and Domain Adaptation (DLAI D5L2 2017 UPC Deep Learning for...
Transfer Learning and Domain Adaptation (DLAI D5L2 2017 UPC Deep Learning for...Transfer Learning and Domain Adaptation (DLAI D5L2 2017 UPC Deep Learning for...
Transfer Learning and Domain Adaptation (DLAI D5L2 2017 UPC Deep Learning for...Universitat Politècnica de Catalunya
 
Multilayer Perceptron (DLAI D1L2 2017 UPC Deep Learning for Artificial Intell...
Multilayer Perceptron (DLAI D1L2 2017 UPC Deep Learning for Artificial Intell...Multilayer Perceptron (DLAI D1L2 2017 UPC Deep Learning for Artificial Intell...
Multilayer Perceptron (DLAI D1L2 2017 UPC Deep Learning for Artificial Intell...Universitat Politècnica de Catalunya
 
Convolutional Neural Networks - Veronica Vilaplana - UPC Barcelona 2018
Convolutional Neural Networks - Veronica Vilaplana - UPC Barcelona 2018Convolutional Neural Networks - Veronica Vilaplana - UPC Barcelona 2018
Convolutional Neural Networks - Veronica Vilaplana - UPC Barcelona 2018Universitat Politècnica de Catalunya
 
Recurrent Neural Networks (D2L2 2017 UPC Deep Learning for Computer Vision)
Recurrent Neural Networks (D2L2 2017 UPC Deep Learning for Computer Vision)Recurrent Neural Networks (D2L2 2017 UPC Deep Learning for Computer Vision)
Recurrent Neural Networks (D2L2 2017 UPC Deep Learning for Computer Vision)Universitat Politècnica de Catalunya
 
Transfer Learning and Domain Adaptation (D2L3 2017 UPC Deep Learning for Comp...
Transfer Learning and Domain Adaptation (D2L3 2017 UPC Deep Learning for Comp...Transfer Learning and Domain Adaptation (D2L3 2017 UPC Deep Learning for Comp...
Transfer Learning and Domain Adaptation (D2L3 2017 UPC Deep Learning for Comp...Universitat Politècnica de Catalunya
 
Image classification using CNN
Image classification using CNNImage classification using CNN
Image classification using CNNNoura Hussein
 

Tendances (20)

Convolutional Neural Networks (D1L3 2017 UPC Deep Learning for Computer Vision)
Convolutional Neural Networks (D1L3 2017 UPC Deep Learning for Computer Vision)Convolutional Neural Networks (D1L3 2017 UPC Deep Learning for Computer Vision)
Convolutional Neural Networks (D1L3 2017 UPC Deep Learning for Computer Vision)
 
Deep Learning for Computer Vision: Transfer Learning and Domain Adaptation (U...
Deep Learning for Computer Vision: Transfer Learning and Domain Adaptation (U...Deep Learning for Computer Vision: Transfer Learning and Domain Adaptation (U...
Deep Learning for Computer Vision: Transfer Learning and Domain Adaptation (U...
 
Joint unsupervised learning of deep representations and image clusters
Joint unsupervised learning of deep representations and image clustersJoint unsupervised learning of deep representations and image clusters
Joint unsupervised learning of deep representations and image clusters
 
Optimizing Deep Networks (D1L6 Insight@DCU Machine Learning Workshop 2017)
Optimizing Deep Networks (D1L6 Insight@DCU Machine Learning Workshop 2017)Optimizing Deep Networks (D1L6 Insight@DCU Machine Learning Workshop 2017)
Optimizing Deep Networks (D1L6 Insight@DCU Machine Learning Workshop 2017)
 
Deep Learning for Computer Vision: Segmentation (UPC 2016)
Deep Learning for Computer Vision: Segmentation (UPC 2016)Deep Learning for Computer Vision: Segmentation (UPC 2016)
Deep Learning for Computer Vision: Segmentation (UPC 2016)
 
Optimization for Deep Networks (D2L1 2017 UPC Deep Learning for Computer Vision)
Optimization for Deep Networks (D2L1 2017 UPC Deep Learning for Computer Vision)Optimization for Deep Networks (D2L1 2017 UPC Deep Learning for Computer Vision)
Optimization for Deep Networks (D2L1 2017 UPC Deep Learning for Computer Vision)
 
Deep 3D Visual Analysis - Javier Ruiz-Hidalgo - UPC Barcelona 2017
Deep 3D Visual Analysis - Javier Ruiz-Hidalgo - UPC Barcelona 2017Deep 3D Visual Analysis - Javier Ruiz-Hidalgo - UPC Barcelona 2017
Deep 3D Visual Analysis - Javier Ruiz-Hidalgo - UPC Barcelona 2017
 
Generative Models and Adversarial Training (D2L3 Insight@DCU Machine Learning...
Generative Models and Adversarial Training (D2L3 Insight@DCU Machine Learning...Generative Models and Adversarial Training (D2L3 Insight@DCU Machine Learning...
Generative Models and Adversarial Training (D2L3 Insight@DCU Machine Learning...
 
Training Deep Networks with Backprop (D1L4 Insight@DCU Machine Learning Works...
Training Deep Networks with Backprop (D1L4 Insight@DCU Machine Learning Works...Training Deep Networks with Backprop (D1L4 Insight@DCU Machine Learning Works...
Training Deep Networks with Backprop (D1L4 Insight@DCU Machine Learning Works...
 
Convolutional Neural Networks (DLAI D5L1 2017 UPC Deep Learning for Artificia...
Convolutional Neural Networks (DLAI D5L1 2017 UPC Deep Learning for Artificia...Convolutional Neural Networks (DLAI D5L1 2017 UPC Deep Learning for Artificia...
Convolutional Neural Networks (DLAI D5L1 2017 UPC Deep Learning for Artificia...
 
Deep Neural Networks (D1L2 Insight@DCU Machine Learning Workshop 2017)
Deep Neural Networks (D1L2 Insight@DCU Machine Learning Workshop 2017)Deep Neural Networks (D1L2 Insight@DCU Machine Learning Workshop 2017)
Deep Neural Networks (D1L2 Insight@DCU Machine Learning Workshop 2017)
 
Transfer Learning and Domain Adaptation (DLAI D5L2 2017 UPC Deep Learning for...
Transfer Learning and Domain Adaptation (DLAI D5L2 2017 UPC Deep Learning for...Transfer Learning and Domain Adaptation (DLAI D5L2 2017 UPC Deep Learning for...
Transfer Learning and Domain Adaptation (DLAI D5L2 2017 UPC Deep Learning for...
 
Multilayer Perceptron (DLAI D1L2 2017 UPC Deep Learning for Artificial Intell...
Multilayer Perceptron (DLAI D1L2 2017 UPC Deep Learning for Artificial Intell...Multilayer Perceptron (DLAI D1L2 2017 UPC Deep Learning for Artificial Intell...
Multilayer Perceptron (DLAI D1L2 2017 UPC Deep Learning for Artificial Intell...
 
Attention Models (D3L6 2017 UPC Deep Learning for Computer Vision)
Attention Models (D3L6 2017 UPC Deep Learning for Computer Vision)Attention Models (D3L6 2017 UPC Deep Learning for Computer Vision)
Attention Models (D3L6 2017 UPC Deep Learning for Computer Vision)
 
Convolutional Neural Networks - Veronica Vilaplana - UPC Barcelona 2018
Convolutional Neural Networks - Veronica Vilaplana - UPC Barcelona 2018Convolutional Neural Networks - Veronica Vilaplana - UPC Barcelona 2018
Convolutional Neural Networks - Veronica Vilaplana - UPC Barcelona 2018
 
Recurrent Instance Segmentation (UPC Reading Group)
Recurrent Instance Segmentation (UPC Reading Group)Recurrent Instance Segmentation (UPC Reading Group)
Recurrent Instance Segmentation (UPC Reading Group)
 
Deep Learning for Computer Vision: Saliency Prediction (UPC 2016)
Deep Learning for Computer Vision: Saliency Prediction (UPC 2016)Deep Learning for Computer Vision: Saliency Prediction (UPC 2016)
Deep Learning for Computer Vision: Saliency Prediction (UPC 2016)
 
Recurrent Neural Networks (D2L2 2017 UPC Deep Learning for Computer Vision)
Recurrent Neural Networks (D2L2 2017 UPC Deep Learning for Computer Vision)Recurrent Neural Networks (D2L2 2017 UPC Deep Learning for Computer Vision)
Recurrent Neural Networks (D2L2 2017 UPC Deep Learning for Computer Vision)
 
Transfer Learning and Domain Adaptation (D2L3 2017 UPC Deep Learning for Comp...
Transfer Learning and Domain Adaptation (D2L3 2017 UPC Deep Learning for Comp...Transfer Learning and Domain Adaptation (D2L3 2017 UPC Deep Learning for Comp...
Transfer Learning and Domain Adaptation (D2L3 2017 UPC Deep Learning for Comp...
 
Image classification using CNN
Image classification using CNNImage classification using CNN
Image classification using CNN
 

Similaire à Deep Learning for Computer Vision: Deep Networks (UPC 2016)

Neural networks and deep learning
Neural networks and deep learningNeural networks and deep learning
Neural networks and deep learningRADO7900
 
JAISTサマースクール2016「脳を知るための理論」講義04 Neural Networks and Neuroscience
JAISTサマースクール2016「脳を知るための理論」講義04 Neural Networks and Neuroscience JAISTサマースクール2016「脳を知るための理論」講義04 Neural Networks and Neuroscience
JAISTサマースクール2016「脳を知るための理論」講義04 Neural Networks and Neuroscience hirokazutanaka
 
convolutional_neural_networks in deep learning
convolutional_neural_networks in deep learningconvolutional_neural_networks in deep learning
convolutional_neural_networks in deep learningssusere5ddd6
 
Mc Culloch Pitts Neuron
Mc Culloch Pitts NeuronMc Culloch Pitts Neuron
Mc Culloch Pitts NeuronShajun Nisha
 
M7 - Neural Networks in machine learning.pdf
M7 - Neural Networks in machine learning.pdfM7 - Neural Networks in machine learning.pdf
M7 - Neural Networks in machine learning.pdfArushiKansal3
 
Convolutional Neural Networks (CNN)
Convolutional Neural Networks (CNN)Convolutional Neural Networks (CNN)
Convolutional Neural Networks (CNN)Gaurav Mittal
 
Machine Learning - Neural Networks - Perceptron
Machine Learning - Neural Networks - PerceptronMachine Learning - Neural Networks - Perceptron
Machine Learning - Neural Networks - PerceptronAndrew Ferlitsch
 
Machine Learning - Introduction to Neural Networks
Machine Learning - Introduction to Neural NetworksMachine Learning - Introduction to Neural Networks
Machine Learning - Introduction to Neural NetworksAndrew Ferlitsch
 
Machine learning by using python lesson 2 Neural Networks By Professor Lili S...
Machine learning by using python lesson 2 Neural Networks By Professor Lili S...Machine learning by using python lesson 2 Neural Networks By Professor Lili S...
Machine learning by using python lesson 2 Neural Networks By Professor Lili S...Professor Lili Saghafi
 
Introduction to Neural Networks in Tensorflow
Introduction to Neural Networks in TensorflowIntroduction to Neural Networks in Tensorflow
Introduction to Neural Networks in TensorflowNicholas McClure
 
Java and Deep Learning (Introduction)
Java and Deep Learning (Introduction)Java and Deep Learning (Introduction)
Java and Deep Learning (Introduction)Oswald Campesato
 
Keras on tensorflow in R & Python
Keras on tensorflow in R & PythonKeras on tensorflow in R & Python
Keras on tensorflow in R & PythonLonghow Lam
 
Artificial neural network paper
Artificial neural network paperArtificial neural network paper
Artificial neural network paperAkashRanjandas1
 
Convolution neural networks
Convolution neural networksConvolution neural networks
Convolution neural networksFares Hasan
 
How machine learning is changing the world
How machine learning is changing the worldHow machine learning is changing the world
How machine learning is changing the worldEmilio Garcia
 
Neural Networks Ver1
Neural  Networks  Ver1Neural  Networks  Ver1
Neural Networks Ver1ncct
 
NeuralArt 電腦作畫
NeuralArt 電腦作畫NeuralArt 電腦作畫
NeuralArt 電腦作畫Mark Chang
 
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習台灣資料科學年會
 

Similaire à Deep Learning for Computer Vision: Deep Networks (UPC 2016) (20)

Neural networks and deep learning
Neural networks and deep learningNeural networks and deep learning
Neural networks and deep learning
 
JAISTサマースクール2016「脳を知るための理論」講義04 Neural Networks and Neuroscience
JAISTサマースクール2016「脳を知るための理論」講義04 Neural Networks and Neuroscience JAISTサマースクール2016「脳を知るための理論」講義04 Neural Networks and Neuroscience
JAISTサマースクール2016「脳を知るための理論」講義04 Neural Networks and Neuroscience
 
convolutional_neural_networks in deep learning
convolutional_neural_networks in deep learningconvolutional_neural_networks in deep learning
convolutional_neural_networks in deep learning
 
Mc Culloch Pitts Neuron
Mc Culloch Pitts NeuronMc Culloch Pitts Neuron
Mc Culloch Pitts Neuron
 
M7 - Neural Networks in machine learning.pdf
M7 - Neural Networks in machine learning.pdfM7 - Neural Networks in machine learning.pdf
M7 - Neural Networks in machine learning.pdf
 
Convolutional Neural Networks (CNN)
Convolutional Neural Networks (CNN)Convolutional Neural Networks (CNN)
Convolutional Neural Networks (CNN)
 
Machine Learning - Neural Networks - Perceptron
Machine Learning - Neural Networks - PerceptronMachine Learning - Neural Networks - Perceptron
Machine Learning - Neural Networks - Perceptron
 
Machine Learning - Introduction to Neural Networks
Machine Learning - Introduction to Neural NetworksMachine Learning - Introduction to Neural Networks
Machine Learning - Introduction to Neural Networks
 
Machine learning by using python lesson 2 Neural Networks By Professor Lili S...
Machine learning by using python lesson 2 Neural Networks By Professor Lili S...Machine learning by using python lesson 2 Neural Networks By Professor Lili S...
Machine learning by using python lesson 2 Neural Networks By Professor Lili S...
 
Introduction to Neural Networks in Tensorflow
Introduction to Neural Networks in TensorflowIntroduction to Neural Networks in Tensorflow
Introduction to Neural Networks in Tensorflow
 
Java and Deep Learning (Introduction)
Java and Deep Learning (Introduction)Java and Deep Learning (Introduction)
Java and Deep Learning (Introduction)
 
Keras on tensorflow in R & Python
Keras on tensorflow in R & PythonKeras on tensorflow in R & Python
Keras on tensorflow in R & Python
 
Artificial neural network paper
Artificial neural network paperArtificial neural network paper
Artificial neural network paper
 
Cnn method
Cnn methodCnn method
Cnn method
 
Convolution neural networks
Convolution neural networksConvolution neural networks
Convolution neural networks
 
How machine learning is changing the world
How machine learning is changing the worldHow machine learning is changing the world
How machine learning is changing the world
 
Neural Networks Ver1
Neural  Networks  Ver1Neural  Networks  Ver1
Neural Networks Ver1
 
NeuralArt 電腦作畫
NeuralArt 電腦作畫NeuralArt 電腦作畫
NeuralArt 電腦作畫
 
tutorial.ppt
tutorial.ppttutorial.ppt
tutorial.ppt
 
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
[DSC 2016] 系列活動:李宏毅 / 一天搞懂深度學習
 

Plus de Universitat Politècnica de Catalunya

The Transformer in Vision | Xavier Giro | Master in Computer Vision Barcelona...
The Transformer in Vision | Xavier Giro | Master in Computer Vision Barcelona...The Transformer in Vision | Xavier Giro | Master in Computer Vision Barcelona...
The Transformer in Vision | Xavier Giro | Master in Computer Vision Barcelona...Universitat Politècnica de Catalunya
 
Towards Sign Language Translation & Production | Xavier Giro-i-Nieto
Towards Sign Language Translation & Production | Xavier Giro-i-NietoTowards Sign Language Translation & Production | Xavier Giro-i-Nieto
Towards Sign Language Translation & Production | Xavier Giro-i-NietoUniversitat Politècnica de Catalunya
 
Learning Representations for Sign Language Videos - Xavier Giro - NIST TRECVI...
Learning Representations for Sign Language Videos - Xavier Giro - NIST TRECVI...Learning Representations for Sign Language Videos - Xavier Giro - NIST TRECVI...
Learning Representations for Sign Language Videos - Xavier Giro - NIST TRECVI...Universitat Politècnica de Catalunya
 
Generation of Synthetic Referring Expressions for Object Segmentation in Videos
Generation of Synthetic Referring Expressions for Object Segmentation in VideosGeneration of Synthetic Referring Expressions for Object Segmentation in Videos
Generation of Synthetic Referring Expressions for Object Segmentation in VideosUniversitat Politècnica de Catalunya
 
Learn2Sign : Sign language recognition and translation using human keypoint e...
Learn2Sign : Sign language recognition and translation using human keypoint e...Learn2Sign : Sign language recognition and translation using human keypoint e...
Learn2Sign : Sign language recognition and translation using human keypoint e...Universitat Politècnica de Catalunya
 
Convolutional Neural Networks - Xavier Giro - UPC TelecomBCN Barcelona 2020
Convolutional Neural Networks - Xavier Giro - UPC TelecomBCN Barcelona 2020Convolutional Neural Networks - Xavier Giro - UPC TelecomBCN Barcelona 2020
Convolutional Neural Networks - Xavier Giro - UPC TelecomBCN Barcelona 2020Universitat Politècnica de Catalunya
 
Self-Supervised Audio-Visual Learning - Xavier Giro - UPC TelecomBCN Barcelon...
Self-Supervised Audio-Visual Learning - Xavier Giro - UPC TelecomBCN Barcelon...Self-Supervised Audio-Visual Learning - Xavier Giro - UPC TelecomBCN Barcelon...
Self-Supervised Audio-Visual Learning - Xavier Giro - UPC TelecomBCN Barcelon...Universitat Politècnica de Catalunya
 
Attention for Deep Learning - Xavier Giro - UPC TelecomBCN Barcelona 2020
Attention for Deep Learning - Xavier Giro - UPC TelecomBCN Barcelona 2020Attention for Deep Learning - Xavier Giro - UPC TelecomBCN Barcelona 2020
Attention for Deep Learning - Xavier Giro - UPC TelecomBCN Barcelona 2020Universitat Politècnica de Catalunya
 
Generative Adversarial Networks GAN - Xavier Giro - UPC TelecomBCN Barcelona ...
Generative Adversarial Networks GAN - Xavier Giro - UPC TelecomBCN Barcelona ...Generative Adversarial Networks GAN - Xavier Giro - UPC TelecomBCN Barcelona ...
Generative Adversarial Networks GAN - Xavier Giro - UPC TelecomBCN Barcelona ...Universitat Politècnica de Catalunya
 
Q-Learning with a Neural Network - Xavier Giró - UPC Barcelona 2020
Q-Learning with a Neural Network - Xavier Giró - UPC Barcelona 2020Q-Learning with a Neural Network - Xavier Giró - UPC Barcelona 2020
Q-Learning with a Neural Network - Xavier Giró - UPC Barcelona 2020Universitat Politècnica de Catalunya
 
Language and Vision with Deep Learning - Xavier Giró - ACM ICMR 2020 (Tutorial)
Language and Vision with Deep Learning - Xavier Giró - ACM ICMR 2020 (Tutorial)Language and Vision with Deep Learning - Xavier Giró - ACM ICMR 2020 (Tutorial)
Language and Vision with Deep Learning - Xavier Giró - ACM ICMR 2020 (Tutorial)Universitat Politècnica de Catalunya
 
Image Segmentation with Deep Learning - Xavier Giro & Carles Ventura - ISSonD...
Image Segmentation with Deep Learning - Xavier Giro & Carles Ventura - ISSonD...Image Segmentation with Deep Learning - Xavier Giro & Carles Ventura - ISSonD...
Image Segmentation with Deep Learning - Xavier Giro & Carles Ventura - ISSonD...Universitat Politècnica de Catalunya
 

Plus de Universitat Politècnica de Catalunya (20)

Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
 
Deep Generative Learning for All
Deep Generative Learning for AllDeep Generative Learning for All
Deep Generative Learning for All
 
The Transformer in Vision | Xavier Giro | Master in Computer Vision Barcelona...
The Transformer in Vision | Xavier Giro | Master in Computer Vision Barcelona...The Transformer in Vision | Xavier Giro | Master in Computer Vision Barcelona...
The Transformer in Vision | Xavier Giro | Master in Computer Vision Barcelona...
 
Towards Sign Language Translation & Production | Xavier Giro-i-Nieto
Towards Sign Language Translation & Production | Xavier Giro-i-NietoTowards Sign Language Translation & Production | Xavier Giro-i-Nieto
Towards Sign Language Translation & Production | Xavier Giro-i-Nieto
 
The Transformer - Xavier Giró - UPC Barcelona 2021
The Transformer - Xavier Giró - UPC Barcelona 2021The Transformer - Xavier Giró - UPC Barcelona 2021
The Transformer - Xavier Giró - UPC Barcelona 2021
 
Learning Representations for Sign Language Videos - Xavier Giro - NIST TRECVI...
Learning Representations for Sign Language Videos - Xavier Giro - NIST TRECVI...Learning Representations for Sign Language Videos - Xavier Giro - NIST TRECVI...
Learning Representations for Sign Language Videos - Xavier Giro - NIST TRECVI...
 
Open challenges in sign language translation and production
Open challenges in sign language translation and productionOpen challenges in sign language translation and production
Open challenges in sign language translation and production
 
Generation of Synthetic Referring Expressions for Object Segmentation in Videos
Generation of Synthetic Referring Expressions for Object Segmentation in VideosGeneration of Synthetic Referring Expressions for Object Segmentation in Videos
Generation of Synthetic Referring Expressions for Object Segmentation in Videos
 
Discovery and Learning of Navigation Goals from Pixels in Minecraft
Discovery and Learning of Navigation Goals from Pixels in MinecraftDiscovery and Learning of Navigation Goals from Pixels in Minecraft
Discovery and Learning of Navigation Goals from Pixels in Minecraft
 
Learn2Sign : Sign language recognition and translation using human keypoint e...
Learn2Sign : Sign language recognition and translation using human keypoint e...Learn2Sign : Sign language recognition and translation using human keypoint e...
Learn2Sign : Sign language recognition and translation using human keypoint e...
 
Intepretability / Explainable AI for Deep Neural Networks
Intepretability / Explainable AI for Deep Neural NetworksIntepretability / Explainable AI for Deep Neural Networks
Intepretability / Explainable AI for Deep Neural Networks
 
Convolutional Neural Networks - Xavier Giro - UPC TelecomBCN Barcelona 2020
Convolutional Neural Networks - Xavier Giro - UPC TelecomBCN Barcelona 2020Convolutional Neural Networks - Xavier Giro - UPC TelecomBCN Barcelona 2020
Convolutional Neural Networks - Xavier Giro - UPC TelecomBCN Barcelona 2020
 
Self-Supervised Audio-Visual Learning - Xavier Giro - UPC TelecomBCN Barcelon...
Self-Supervised Audio-Visual Learning - Xavier Giro - UPC TelecomBCN Barcelon...Self-Supervised Audio-Visual Learning - Xavier Giro - UPC TelecomBCN Barcelon...
Self-Supervised Audio-Visual Learning - Xavier Giro - UPC TelecomBCN Barcelon...
 
Attention for Deep Learning - Xavier Giro - UPC TelecomBCN Barcelona 2020
Attention for Deep Learning - Xavier Giro - UPC TelecomBCN Barcelona 2020Attention for Deep Learning - Xavier Giro - UPC TelecomBCN Barcelona 2020
Attention for Deep Learning - Xavier Giro - UPC TelecomBCN Barcelona 2020
 
Generative Adversarial Networks GAN - Xavier Giro - UPC TelecomBCN Barcelona ...
Generative Adversarial Networks GAN - Xavier Giro - UPC TelecomBCN Barcelona ...Generative Adversarial Networks GAN - Xavier Giro - UPC TelecomBCN Barcelona ...
Generative Adversarial Networks GAN - Xavier Giro - UPC TelecomBCN Barcelona ...
 
Q-Learning with a Neural Network - Xavier Giró - UPC Barcelona 2020
Q-Learning with a Neural Network - Xavier Giró - UPC Barcelona 2020Q-Learning with a Neural Network - Xavier Giró - UPC Barcelona 2020
Q-Learning with a Neural Network - Xavier Giró - UPC Barcelona 2020
 
Language and Vision with Deep Learning - Xavier Giró - ACM ICMR 2020 (Tutorial)
Language and Vision with Deep Learning - Xavier Giró - ACM ICMR 2020 (Tutorial)Language and Vision with Deep Learning - Xavier Giró - ACM ICMR 2020 (Tutorial)
Language and Vision with Deep Learning - Xavier Giró - ACM ICMR 2020 (Tutorial)
 
Image Segmentation with Deep Learning - Xavier Giro & Carles Ventura - ISSonD...
Image Segmentation with Deep Learning - Xavier Giro & Carles Ventura - ISSonD...Image Segmentation with Deep Learning - Xavier Giro & Carles Ventura - ISSonD...
Image Segmentation with Deep Learning - Xavier Giro & Carles Ventura - ISSonD...
 
Curriculum Learning for Recurrent Video Object Segmentation
Curriculum Learning for Recurrent Video Object SegmentationCurriculum Learning for Recurrent Video Object Segmentation
Curriculum Learning for Recurrent Video Object Segmentation
 
Deep Self-supervised Learning for All - Xavier Giro - X-Europe 2020
Deep Self-supervised Learning for All - Xavier Giro - X-Europe 2020Deep Self-supervised Learning for All - Xavier Giro - X-Europe 2020
Deep Self-supervised Learning for All - Xavier Giro - X-Europe 2020
 

Dernier

Call Girls Service Nashik Vaishnavi 7001305949 Independent Escort Service Nashik
Call Girls Service Nashik Vaishnavi 7001305949 Independent Escort Service NashikCall Girls Service Nashik Vaishnavi 7001305949 Independent Escort Service Nashik
Call Girls Service Nashik Vaishnavi 7001305949 Independent Escort Service NashikCall Girls in Nagpur High Profile
 
Microscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxMicroscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxpurnimasatapathy1234
 
Introduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptxIntroduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptxupamatechverse
 
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).pptssuser5c9d4b1
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlysanyuktamishra911
 
SPICE PARK APR2024 ( 6,793 SPICE Models )
SPICE PARK APR2024 ( 6,793 SPICE Models )SPICE PARK APR2024 ( 6,793 SPICE Models )
SPICE PARK APR2024 ( 6,793 SPICE Models )Tsuyoshi Horigome
 
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...Christo Ananth
 
Introduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxIntroduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxupamatechverse
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSKurinjimalarL3
 
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Dr.Costas Sachpazis
 
(MEERA) Dapodi Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Escorts
(MEERA) Dapodi Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Escorts(MEERA) Dapodi Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Escorts
(MEERA) Dapodi Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Escortsranjana rawat
 
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...ranjana rawat
 
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur High Profile
 
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICSHARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICSRajkumarAkumalla
 
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Serviceranjana rawat
 
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...ranjana rawat
 
UNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular ConduitsUNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular Conduitsrknatarajan
 
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...Dr.Costas Sachpazis
 
result management system report for college project
result management system report for college projectresult management system report for college project
result management system report for college projectTonystark477637
 

Dernier (20)

Call Girls Service Nashik Vaishnavi 7001305949 Independent Escort Service Nashik
Call Girls Service Nashik Vaishnavi 7001305949 Independent Escort Service NashikCall Girls Service Nashik Vaishnavi 7001305949 Independent Escort Service Nashik
Call Girls Service Nashik Vaishnavi 7001305949 Independent Escort Service Nashik
 
Microscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxMicroscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptx
 
Introduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptxIntroduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptx
 
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
247267395-1-Symmetric-and-distributed-shared-memory-architectures-ppt (1).ppt
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghly
 
SPICE PARK APR2024 ( 6,793 SPICE Models )
SPICE PARK APR2024 ( 6,793 SPICE Models )SPICE PARK APR2024 ( 6,793 SPICE Models )
SPICE PARK APR2024 ( 6,793 SPICE Models )
 
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
 
Introduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxIntroduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptx
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
 
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
 
(MEERA) Dapodi Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Escorts
(MEERA) Dapodi Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Escorts(MEERA) Dapodi Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Escorts
(MEERA) Dapodi Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Escorts
 
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
 
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
 
Roadmap to Membership of RICS - Pathways and Routes
Roadmap to Membership of RICS - Pathways and RoutesRoadmap to Membership of RICS - Pathways and Routes
Roadmap to Membership of RICS - Pathways and Routes
 
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICSHARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
 
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
 
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
The Most Attractive Pune Call Girls Manchar 8250192130 Will You Miss This Cha...
 
UNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular ConduitsUNIT-II FMM-Flow Through Circular Conduits
UNIT-II FMM-Flow Through Circular Conduits
 
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
 
result management system report for college project
result management system report for college projectresult management system report for college project
result management system report for college project
 

Deep Learning for Computer Vision: Deep Networks (UPC 2016)

  • 1. Day 1 Lecture 3 Deep Networks Elisa Sayrol [course site]
  • 2. From Neurons to Convolutional Neural Networks Figures Credit: Hugo Laroche NN course 2
  • 3. From Neurons to Convolutional Neural Networks Figure Credit: Hugo Laroche NN course Hidden pre-activation Hidden activation Output activation g(x) activation function: sigmoid: tangh: ReLU: o(x) output activation function: Softmax: 3
  • 4. From Neurons to Convolutional Neural Networks L Hidden Layers Hidden pre-activation (k>0) Hidden activation (k=1,…L) Output activation (k=L+1) Slide Credit: Hugo Laroche NN course 4
  • 5. From Neurons to Convolutional Neural Networks What if the input is all the pixels within an image? 5
  • 6. From Neurons to Convolutional Neural Networks For a 200x200 image, we have 4x104 neurons each one with 4x104 inputs, that is 16x108 parameters, only for one layer!!! Figure Credit: Ranzatto 6
  • 7. From Neurons to Convolutional Neural Networks For a 200x200 image, we have 4x104 neurons each one with 10x10 “local connections” (also called receptive field) inputs, that is 4x106 What else can we do to reduce the number of parameters? Figure Credit: Ranzatto 7
  • 8. From Neurons to Convolutional Neural Networks Translation invariance: we can use same parameters to capture a specific “feature” in any area of the image. We can try different sets of parameters to capture different features. These operations are equivalent to perform convolutions with different filters. Ex: With100 different filters (or feature extractors) of size 10x10, the number of parameters is 104 That is why they are called Convolutional Neural Networks, ( ConvNets or CNNs) Figure Credit: Ranzatto 8
  • 9. From Neurons to Convolutional Neural Networks …and don’t forget the activation function! Figure Credit: Ranzatto ReLu PReLu 9
  • 10. From Neurons to Convolutional Neural Networks Most ConvNets use Pooling (or subsampling) to reduce dimensionality and provide invariance to small local changes. Pooling options: • Max • Average • Stochastic pooling Figure Credit: Ranzatto 10
  • 11. From Neurons to Convolutional Neural Networks Padding (P): When doing the convolution in the borders, you may add values to compute the convolution. When the values are zero, that is quite common, the technique is called zero-padding. When padding is not used the output size is reduced. FxF=3x3 11
  • 12. From Neurons to Convolutional Neural Networks Padding (P): When doing the convolution in the borders, you may add values to compute the convolution. When the values are zero, that is quite common, the technique is called zero-padding. When padding is not used the output size is reduced. FxF=5x5 12
  • 13. From Neurons to Convolutional Neural Networks Stride (S): When doing the convolution or another operation, like pooling, we may decide to slide not pixel by pixel but every 2 or more pixels. The number of pixels that we skip is the value of the stride. It might be used to reduce the dimensionality of the output 13
  • 14. From Neurons to Convolutional Neural Networks Example: Most convnets contain several convolutional layers, interspersed with pooling layers, and followed by a small number of fully connected layers A layer is characterized by its width, height and depth (that is, the number of filters used to generate the feature maps) An architecture is characterized by the number of layers LeNet-5 From Lecun ´98 14