HR-Pro: Point-supervised Temporal Action Localization via Hierarchical Reliability Propagation

24 Aug 2023  ยท  Huaxin Zhang, Xiang Wang, Xiaohao Xu, Zhiwu Qing, Changxin Gao, Nong Sang ยท

Point-supervised Temporal Action Localization (PSTAL) is an emerging research direction for label-efficient learning. However, current methods mainly focus on optimizing the network either at the snippet-level or the instance-level, neglecting the inherent reliability of point annotations at both levels. In this paper, we propose a Hierarchical Reliability Propagation (HR-Pro) framework, which consists of two reliability-aware stages: Snippet-level Discrimination Learning and Instance-level Completeness Learning, both stages explore the efficient propagation of high-confidence cues in point annotations. For snippet-level learning, we introduce an online-updated memory to store reliable snippet prototypes for each class. We then employ a Reliability-aware Attention Block to capture both intra-video and inter-video dependencies of snippets, resulting in more discriminative and robust snippet representation. For instance-level learning, we propose a point-based proposal generation approach as a means of connecting snippets and instances, which produces high-confidence proposals for further optimization at the instance level. Through multi-level reliability-aware learning, we obtain more reliable confidence scores and more accurate temporal boundaries of predicted proposals. Our HR-Pro achieves state-of-the-art performance on multiple challenging benchmarks, including an impressive average mAP of 60.3% on THUMOS14. Notably, our HR-Pro largely surpasses all previous point-supervised methods, and even outperforms several competitive fully supervised methods. Code will be available at https://github.com/pipixin321/HR-Pro.

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Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Weakly Supervised Action Localization BEOID HR-Pro mAP@0.1:0.7 59.4 # 1
mAP@0.5 55.3 # 1
Weakly Supervised Action Localization GTEA HR-Pro mAP@0.1:0.7 47.3 # 2
mAP@0.5 37.3 # 2
Weakly Supervised Action Localization THUMOS14 HR-Pro avg-mAP (0.1-0.5) 71.6 # 1
avg-mAP (0.3-0.7) 51.1 # 1
avg-mAP (0.1:0.7) 60.3 # 1
Weakly Supervised Action Localization THUMOS 2014 HR-Pro mAP@0.5 52.2 # 1
mAP@0.1:0.7 60.3 # 1
mAP@0.1:0.5 71.6 # 1

Methods