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TriDet: Temporal Action Detection with Relative Boundary Modeling

13 March 2023
Ding Shi
Yujie Zhong
Qiong Cao
Lin Ma
Jia Li
Dacheng Tao
    ViT
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Abstract

In this paper, we present a one-stage framework TriDet for temporal action detection. Existing methods often suffer from imprecise boundary predictions due to the ambiguous action boundaries in videos. To alleviate this problem, we propose a novel Trident-head to model the action boundary via an estimated relative probability distribution around the boundary. In the feature pyramid of TriDet, we propose an efficient Scalable-Granularity Perception (SGP) layer to mitigate the rank loss problem of self-attention that takes place in the video features and aggregate information across different temporal granularities. Benefiting from the Trident-head and the SGP-based feature pyramid, TriDet achieves state-of-the-art performance on three challenging benchmarks: THUMOS14, HACS and EPIC-KITCHEN 100, with lower computational costs, compared to previous methods. For example, TriDet hits an average mAP of 69.3%69.3\%69.3% on THUMOS14, outperforming the previous best by 2.5%2.5\%2.5%, but with only 74.6%74.6\%74.6% of its latency. The code is released to https://github.com/sssste/TriDet.

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