4.7 Article

Efficient Video Grounding With Which-Where Reading Comprehension

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCSVT.2022.3174136

关键词

Grounding; Proposals; Visualization; Location awareness; Task analysis; Reinforcement learning; Germanium; Efficient video grounding; which-where reading comprehension; cross-modal content understanding; deep learning

资金

  1. King Abdullah University of Science and Technology (KAUST) Office of Sponsored Research through the Visual Computing Center (VCC)
  2. Beijing Natural Science Foundation [19L2040]
  3. National Natural Science Foundation of China [61772513]
  4. CloudWalk Technology Company Ltd.

向作者/读者索取更多资源

Video grounding is a crucial technique for localizing temporal moments related to language descriptions. This paper presents an efficient framework that imitates the reading comprehension process to narrow the decision space, achieving accurate video grounding.
Video grounding aims at localizing the temporal moment related to the given language description, which is very helpful to many cross-modal content understanding applications like visual question answering and sentence-video search. Existing approaches usually directly regress the temporal boundaries of an event described by a query sentence in the video sequence. This direct regression manner often encounters a large decision space due to diverse target events and variable video durations, leading to inaccurate localization as well as inefficient grounding. This paper presents an efficient framework termed from which to where to facilitate video grounding. The core idea is imitating the reading comprehension process to gradually narrow the decision space, in what we decompose the direct regression into two steps. The which step first roughly selects a candidate area by evaluating which video segment in the predefined set is closest to the ground truth. To this end, we formulate this step into a multi-choice reading comprehension problem and propose a criterion to select the best-matched segment. In this way, the excessive decision space is effectively reduced. The where step aims to precisely regress the temporal boundary of the selected video segment from the shrunk decision space. We thus introduce a triple-span representation for each candidate video segment to use the regional context for better boundary regression. The which and where steps can be combined into a unified framework and learned end-to-end, leading to an efficient video grounding system. Extensive experiments on Charades-STA, ActivityNet-Captions, and TACoS benchmarks clearly demonstrate the effectiveness of our framework.

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