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Dense-Captioning Events
in Videos
Dense-Captioning
Highlight
• Task: dense-captioning events
• Dataset: ActivityNet Captions
• Events range across multiple time scales and can even overlap.
• generating action proposals to multi-scale detection of events,
processes each video in a forward pass to detect events as they occur
• Events in a given video are usually related to one another.
• introduce a captioning module that utilizes the context from all the
events from our proposal module to generate each sentence
DenseCap:
Fully Convolutional Localization Networks for Dense Captioning
DenseCap:
Fully Convolutional Localization Networks for Dense Captioning
Method V. Escorcia, F. C. Heilbron, J. C. Niebles, and B. Ghanem.
Daps: Deep action proposals for action understanding.
2016,ECCV
J. Johnson, A.
Karpathy, and L.
Fei-Fei.
DenseCap:
Fully
convolutional
localization
networks for
dense
captioning.
A. Alahi, K. Goel, V.
Ramanathan, A.
Robicquet, L. Fei-
Fei,
and S. Savarese.
Social lstm: Human
trajectory prediction
in
crowded spaces.
object-centric
in images
action-centric
in videos
Performance
Discussion Jointly Localizing and Describing Events for Dense Video Captioning
Discussion Joint Event Detection and Description in Continuous Video Streams

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Dense-captioning events in videos

  • 3. Highlight • Task: dense-captioning events • Dataset: ActivityNet Captions • Events range across multiple time scales and can even overlap. • generating action proposals to multi-scale detection of events, processes each video in a forward pass to detect events as they occur • Events in a given video are usually related to one another. • introduce a captioning module that utilizes the context from all the events from our proposal module to generate each sentence
  • 4. DenseCap: Fully Convolutional Localization Networks for Dense Captioning
  • 5. DenseCap: Fully Convolutional Localization Networks for Dense Captioning
  • 6. Method V. Escorcia, F. C. Heilbron, J. C. Niebles, and B. Ghanem. Daps: Deep action proposals for action understanding. 2016,ECCV J. Johnson, A. Karpathy, and L. Fei-Fei. DenseCap: Fully convolutional localization networks for dense captioning. A. Alahi, K. Goel, V. Ramanathan, A. Robicquet, L. Fei- Fei, and S. Savarese. Social lstm: Human trajectory prediction in crowded spaces. object-centric in images action-centric in videos
  • 8. Discussion Jointly Localizing and Describing Events for Dense Video Captioning
  • 9. Discussion Joint Event Detection and Description in Continuous Video Streams

Notes de l'éditeur

  1. 1.给定视频,生成特征序列。实验中以16帧为单位,输入C3D提取特征。 2.proposal module。proposal module是在DAPs的基础上做了一点修改,即在每一个time step输出K个proposals。采用LSTM结构,输入上述C3D特征序列,用不同的strides提取特征序列,strides={1,2,4,8}。 生成的proposal在时间上会有重叠。每检测出一个event,就将当前的隐藏层状态作为视频描述。 3.captioning module。利用相邻事件的context来生成event caption。采用LSTM结构。 将所有的事件相对于当前事件分成两个桶:past events和future events。并发事件则依据结束时间分成past events和future events。