PointTAD: Multi-Label Temporal Action Detection with Learnable Query Points

20 Oct 2022  ·  Jing Tan, Xiaotong Zhao, Xintian Shi, Bin Kang, LiMin Wang ·

Traditional temporal action detection (TAD) usually handles untrimmed videos with small number of action instances from a single label (e.g., ActivityNet, THUMOS). However, this setting might be unrealistic as different classes of actions often co-occur in practice. In this paper, we focus on the task of multi-label temporal action detection that aims to localize all action instances from a multi-label untrimmed video. Multi-label TAD is more challenging as it requires for fine-grained class discrimination within a single video and precise localization of the co-occurring instances. To mitigate this issue, we extend the sparse query-based detection paradigm from the traditional TAD and propose the multi-label TAD framework of PointTAD. Specifically, our PointTAD introduces a small set of learnable query points to represent the important frames of each action instance. This point-based representation provides a flexible mechanism to localize the discriminative frames at boundaries and as well the important frames inside the action. Moreover, we perform the action decoding process with the Multi-level Interactive Module to capture both point-level and instance-level action semantics. Finally, our PointTAD employs an end-to-end trainable framework simply based on RGB input for easy deployment. We evaluate our proposed method on two popular benchmarks and introduce the new metric of detection-mAP for multi-label TAD. Our model outperforms all previous methods by a large margin under the detection-mAP metric, and also achieves promising results under the segmentation-mAP metric. Code is available at https://github.com/MCG-NJU/PointTAD.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Temporal Action Localization MultiTHUMOS PointTAD Average mAP 23.5 # 4
mAP IOU@0.1 42.3 # 2
mAP IOU@0.2 39.7 # 4
mAP IOU@0.3 35.8 # 2
mAP IOU@0.4 30.9 # 2
mAP IOU@0.5 24.9 # 4
mAP IOU@0.6 18.5 # 2
mAP IOU@0.7 12.0 # 4
mAP IOU@0.8 5.6 # 2
mAP IOU@0.9 1.4 # 2

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