Annotation-Efficient Untrimmed Video Action Recognition
Yixiong Zou, Shanghang Zhang, Guangyao Chen, Yonghong Tian, Kurt, Keutzer, Jos\'e M. F. Moura

TL;DR
This paper introduces a novel approach for untrimmed video action recognition that reduces annotation requirements by effectively distinguishing relevant actions from background noise using self-supervised and open-set detection techniques.
Contribution
It proposes a new framework combining open-set detection, contrastive learning, and self-weighting to handle weak supervision and background ambiguity in untrimmed videos.
Findings
Achieves superior performance on ActivityNet datasets
Effectively distinguishes informative background from non-informative background
Reduces annotation effort while maintaining recognition accuracy
Abstract
Deep learning has achieved great success in recognizing video actions, but the collection and annotation of training data are still quite laborious, which mainly lies in two aspects: (1) the amount of required annotated data is large; (2) temporally annotating the location of each action is time-consuming. Works such as few-shot learning or untrimmed video recognition have been proposed to handle either one aspect or the other. However, very few existing works can handle both issues simultaneously. In this paper, we target a new problem, Annotation-Efficient Video Recognition, to reduce the requirement of annotations for both large amount of samples and the action location. Such problem is challenging due to two aspects: (1) the untrimmed videos only have weak supervision; (2) video segments not relevant to current actions of interests (background, BG) could contain actions of interests…
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Taxonomy
TopicsHuman Pose and Action Recognition · Anomaly Detection Techniques and Applications · Multimodal Machine Learning Applications
MethodsContrastive Learning
