CVDec 4, 2023

Adapting Short-Term Transformers for Action Detection in Untrimmed Videos

arXiv:2312.01897v225 citationsh-index: 2CVPR
Originality Incremental advance
AI Analysis

This addresses the problem of efficient and accurate action detection in long videos for video analysis applications, representing an incremental improvement with a novel adaptation method.

The paper tackled adapting pre-trained short-term Vision Transformers for temporal action detection in untrimmed videos by designing cross-snippet propagation modules to capture inter-snippet relations, achieving up to 69.5 average mAP on THUMOS14, 37.40 on ActivityNet-1.3, and 17.20 on FineAction.

Vision Transformer (ViT) has shown high potential in video recognition, owing to its flexible design, adaptable self-attention mechanisms, and the efficacy of masked pre-training. Yet, it remains unclear how to adapt these pre-trained short-term ViTs for temporal action detection (TAD) in untrimmed videos. The existing works treat them as off-the-shelf feature extractors for each short-trimmed snippet without capturing the fine-grained relation among different snippets in a broader temporal context. To mitigate this issue, this paper focuses on designing a new mechanism for adapting these pre-trained ViT models as a unified long-form video transformer to fully unleash its modeling power in capturing inter-snippet relation, while still keeping low computation overhead and memory consumption for efficient TAD. To this end, we design effective cross-snippet propagation modules to gradually exchange short-term video information among different snippets from two levels. For inner-backbone information propagation, we introduce a cross-snippet propagation strategy to enable multi-snippet temporal feature interaction inside the backbone.For post-backbone information propagation, we propose temporal transformer layers for further clip-level modeling. With the plain ViT-B pre-trained with VideoMAE, our end-to-end temporal action detector (ViT-TAD) yields a very competitive performance to previous temporal action detectors, riching up to 69.5 average mAP on THUMOS14, 37.40 average mAP on ActivityNet-1.3 and 17.20 average mAP on FineAction.

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