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EURECOM @MediaEval 2017:
Media Genre Inference for
Predicting Media Interestingness
O. Ben-Ahmed, J. Wacker, A. Gaballo, B. Huet
EURECOM
Sophia Antipolis, France
Introduction
 Predicting Media Interestingness (PMI)
 automatically analyze media data
 identify the most attractive content
 Content based approaches
 gap between low-level features
and high-level human perception
 Our proposal
 Address PMI in association with
Media Genre
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 2
http://www.dailyherald.com/article/20110627/entlife/706279989/
Why Genre Inference for PMI
 Motivation
 Interestingness is highly correlated with data emotional content
 Affective representation of data content
 Hypothesis
 Emotional impact of movie genre can be a factor for interestingness
of a video fragment
 Method
 Mid-level representation based on media genre prediction for PMI
– Represent each video fragment/image as a distribution of genres
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 3
Our Framework
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 4
Media Genre Prediction
 Visual Branch
 Middle frame selection
 Deep CNN for features extraction
 DNN classifier
 Audio Branch
 Audio extraction : OpenSmile
 Deep features extraction : Soundnet
 SVM classifier
VGG Architecture
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 5
| X
| X
Media Genre Prediction Example
Visual Audio Audio-Visual
Action
Drama
Horror
Romance
Sci-fi
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 6
Media Genre Prediction Example
Visual Audio Audio-Visual
Action
Drama
Horror
Romance
Sci-fi
2.5% 33,34% 17.92%
0% 17,78% 8.89%
0.37% 2.61% 1.49%
0% 3.87% 1.93%
97.12% 42,40% 69,76%
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 7
Media Genre Prediction Example
Visual Audio Audio-Visual
Action
Drama
Horror
Romance
Sci-fi
Interestingness : 1
Rank : 1
2.5% 33,34% 17.92%
0% 17,78% 8.89%
0.37% 2.61% 1.49%
0% 3.87% 1.93%
97.12% 42,40% 69,76%
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 8
Interestingness Classification
 Features vectors
 probability vector for the genre distribution for the video/image
 Classifier
 Binary SVM,
 Taking into account the confidence score in training
 Image subtask
 Visual genre vector
 Video subtask
 Visual genre vector
 Audio-Visual genre vector
– Mean of visual- and audio-based genre vectors probabilities
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 9
Experiments and Results
TASK RUN SVM CLASSIFIER MAP MAP@10
IMAGE 1 Sigmoid kernel 0.2029 0.0587
2 Linear kernel 0.2016 0.0579
VIDEO 1 Sigmoid kernel gamma=0.5, C=100 0.2034 0.0717
2 Polynomial kernel degree=3 0.1960 0.0732
3 Polynomial kernel degree=2 0.1964 0.0640
4 Sigmoid kernel gamma=0.2, C=100 0.2094 0.0827
5 Sigmoid kernel gamma=0.3 , C=100 0.2002 0.0774
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 10
Experiments and Results
TASK RUN SVM CLASSIFIER MAP MAP@10
IMAGE 1 Sigmoid kernel 0.2029 0.0587
2 Linear kernel 0.2016 0.0579
VIDEO 1 Sigmoid kernel gamma=0.5, C=100 0.2034 0.0717
2 Polynomial kernel degree=3 0.1960 0.0732
3 Polynomial kernel degree=2 0.1964 0.0640
4 Sigmoid kernel gamma=0.2, C=100 0.2094 0.0827
5 Sigmoid kernel gamma=0.3 , C=100 0.2002 0.0774
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 11
Conclusions and Future Work
 We proposed a Genre Recognition System as a mid-
level representation for Predicting Media
Interestingness
 Deep Audio and Visual Features for Genre Recognition
 SVM Classifier for Predicting Media Interestingness
 Best Results:
 20,29 MAP for Image and 20,94 MAP for Video (on test set).
 Audio brings limited additional information for PMI
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 12
Conclusions and Future Work
 We proposed a Genre Recognition System as a mid-
level representation for Predicting Media
Interestingness
 Deep Audio and Visual Features for Genre Recognition
 SVM Classifier for Predicting Media Interestingness
 Best Results:
 20,29 MAP for Image and 20,94 MAP for Video (on test set).
 Audio brings limited additional information for PMI
 Joint learning of audio-visual features
 Integration of temporal information
13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 13
Questions?
Benoit Huet.
MediaEval2017 Dublin - B. HUET, EURECOM - p 1413/09/2017
Media Genre Inference for
Predicting Media Interestingness
@
2017
Thank you,

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Media Genre Inference for Predicting Media Interestingness

  • 1. EURECOM @MediaEval 2017: Media Genre Inference for Predicting Media Interestingness O. Ben-Ahmed, J. Wacker, A. Gaballo, B. Huet EURECOM Sophia Antipolis, France
  • 2. Introduction  Predicting Media Interestingness (PMI)  automatically analyze media data  identify the most attractive content  Content based approaches  gap between low-level features and high-level human perception  Our proposal  Address PMI in association with Media Genre 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 2 http://www.dailyherald.com/article/20110627/entlife/706279989/
  • 3. Why Genre Inference for PMI  Motivation  Interestingness is highly correlated with data emotional content  Affective representation of data content  Hypothesis  Emotional impact of movie genre can be a factor for interestingness of a video fragment  Method  Mid-level representation based on media genre prediction for PMI – Represent each video fragment/image as a distribution of genres 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 3
  • 4. Our Framework 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 4
  • 5. Media Genre Prediction  Visual Branch  Middle frame selection  Deep CNN for features extraction  DNN classifier  Audio Branch  Audio extraction : OpenSmile  Deep features extraction : Soundnet  SVM classifier VGG Architecture 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 5 | X | X
  • 6. Media Genre Prediction Example Visual Audio Audio-Visual Action Drama Horror Romance Sci-fi 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 6
  • 7. Media Genre Prediction Example Visual Audio Audio-Visual Action Drama Horror Romance Sci-fi 2.5% 33,34% 17.92% 0% 17,78% 8.89% 0.37% 2.61% 1.49% 0% 3.87% 1.93% 97.12% 42,40% 69,76% 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 7
  • 8. Media Genre Prediction Example Visual Audio Audio-Visual Action Drama Horror Romance Sci-fi Interestingness : 1 Rank : 1 2.5% 33,34% 17.92% 0% 17,78% 8.89% 0.37% 2.61% 1.49% 0% 3.87% 1.93% 97.12% 42,40% 69,76% 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 8
  • 9. Interestingness Classification  Features vectors  probability vector for the genre distribution for the video/image  Classifier  Binary SVM,  Taking into account the confidence score in training  Image subtask  Visual genre vector  Video subtask  Visual genre vector  Audio-Visual genre vector – Mean of visual- and audio-based genre vectors probabilities 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 9
  • 10. Experiments and Results TASK RUN SVM CLASSIFIER MAP MAP@10 IMAGE 1 Sigmoid kernel 0.2029 0.0587 2 Linear kernel 0.2016 0.0579 VIDEO 1 Sigmoid kernel gamma=0.5, C=100 0.2034 0.0717 2 Polynomial kernel degree=3 0.1960 0.0732 3 Polynomial kernel degree=2 0.1964 0.0640 4 Sigmoid kernel gamma=0.2, C=100 0.2094 0.0827 5 Sigmoid kernel gamma=0.3 , C=100 0.2002 0.0774 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 10
  • 11. Experiments and Results TASK RUN SVM CLASSIFIER MAP MAP@10 IMAGE 1 Sigmoid kernel 0.2029 0.0587 2 Linear kernel 0.2016 0.0579 VIDEO 1 Sigmoid kernel gamma=0.5, C=100 0.2034 0.0717 2 Polynomial kernel degree=3 0.1960 0.0732 3 Polynomial kernel degree=2 0.1964 0.0640 4 Sigmoid kernel gamma=0.2, C=100 0.2094 0.0827 5 Sigmoid kernel gamma=0.3 , C=100 0.2002 0.0774 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 11
  • 12. Conclusions and Future Work  We proposed a Genre Recognition System as a mid- level representation for Predicting Media Interestingness  Deep Audio and Visual Features for Genre Recognition  SVM Classifier for Predicting Media Interestingness  Best Results:  20,29 MAP for Image and 20,94 MAP for Video (on test set).  Audio brings limited additional information for PMI 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 12
  • 13. Conclusions and Future Work  We proposed a Genre Recognition System as a mid- level representation for Predicting Media Interestingness  Deep Audio and Visual Features for Genre Recognition  SVM Classifier for Predicting Media Interestingness  Best Results:  20,29 MAP for Image and 20,94 MAP for Video (on test set).  Audio brings limited additional information for PMI  Joint learning of audio-visual features  Integration of temporal information 13/09/2017 MediaEval2017 Dublin - B. HUET, EURECOM - p 13
  • 14. Questions? Benoit Huet. MediaEval2017 Dublin - B. HUET, EURECOM - p 1413/09/2017 Media Genre Inference for Predicting Media Interestingness @ 2017 Thank you,