4.8 Article

Background-Click Supervision for Temporal Action Localization

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2021.3132058

Keywords

Location awareness; Annotations; Proposals; Task analysis; Costs; Hidden Markov models; Supervised learning; Temporal action localization; background-click supervision; weakly supervised learning

Funding

  1. Key-Area Research and Development Program of Guangdong Province [2019B010110001]
  2. National Natural Science Foundation of China [62136007, 61876140, U21B20481010927]

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This study proposes a novel method called BackTAL, which converts action-click supervision to background-click supervision, and trains a stronger action localizer on background video frames. BackTAL implements two-fold modeling on the background frames and dynamically attends to informative neighbors during temporal convolution. Extensive experiments demonstrate the high performance of BackTAL and the rationality of the proposed background-click supervision.
Weakly supervised temporal action localization aims at learning the instance-level action pattern from the video-level labels, where a significant challenge is action-context confusion. To overcome this challenge, one recent work builds an action-click supervision framework. It requires similar annotation costs but can steadily improve the localization performance when compared to the conventional weakly supervised methods. In this paper, by revealing that the performance bottleneck of the existing approaches mainly comes from the background errors, we find that a stronger action localizer can be trained with labels on the background video frames rather than those on the action frames. To this end, we convert the action-click supervision to the background-click supervision and develop a novel method, called BackTAL. Specifically, BackTAL implements two-fold modeling on the background video frames, i.e., the position modeling and the feature modeling. In position modeling, we not only conduct supervised learning on the annotated video frames but also design a score separation module to enlarge the score differences between the potential action frames and backgrounds. In feature modeling, we propose an affinity module to measure frame-specific similarities among neighboring frames and dynamically attend to informative neighbors when calculating temporal convolution. Extensive experiments on three benchmarks are conducted, which demonstrate the high performance of the established BackTAL and the rationality of the proposed background-click supervision.

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