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ECO: Efficient Convolutional Network for Online Video Understanding

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The state of the art in video understanding suffers from two problems: (1) The major part of reasoning is performed locally in the video, therefore, it misses important relationships within actions that span several seconds. (2) While there are local methods with fast per-frame processing, the processing of the whole video is not efficient and hampers fast video retrieval or online classification of long-term activities. In this paper, we introduce a network architecture that takes long-term content into account and enables fast per-video processing at the same time. The architecture is based on merging long-term content already in the network rather than in a post-hoc fusion. Together with a sampling strategy, which exploits that neighboring frames are largely redundant, this yields high-quality action classification and video captioning at up to 230 videos per second, where each video can consist of a few hundred frames. The approach achieves competitive performance across all datasets while being 10x to 80x faster than state-of-the-art methods.

Mohammadreza Zolfaghari, Kamaljeet Singh, Thomas Brox• 2018

Related benchmarks

TaskDatasetResultRank
Action RecognitionKinetics-400
Top-1 Acc70
413
Action RecognitionUCF101
Accuracy94.8
365
Action RecognitionUCF101 (mean of 3 splits)
Accuracy94.8
357
Action RecognitionUCF101 (test)--
307
Action RecognitionSomething-something v1 (val)
Top-1 Acc49.5
257
Action RecognitionKinetics 400 (test)
Top-1 Accuracy70
245
Action RecognitionHMDB51
Top-1 Acc72.4
225
Action RecognitionHMDB-51 (average of three splits)
Top-1 Acc72.4
204
Action RecognitionSomething-something v1 (test)
Top-1 Accuracy49.5
189
Action RecognitionSomething-Something V1
Top-1 Acc49.5
162
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