Long-Tail Temporal Action Segmentation with Group-wise Temporal Logit Adjustment
Procedural activity videos often exhibit a long-tailed action distribution due to varying action frequencies and durations. However, state-of-the-art temporal action segmentation methods overlook the long tail and fail to recognize tail actions. Existing long-tail methods make class-independent assu...
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Zusammenfassung: | Procedural activity videos often exhibit a long-tailed action distribution
due to varying action frequencies and durations. However, state-of-the-art
temporal action segmentation methods overlook the long tail and fail to
recognize tail actions. Existing long-tail methods make class-independent
assumptions and struggle to identify tail classes when applied to temporal
segmentation frameworks. This work proposes a novel group-wise temporal logit
adjustment~(G-TLA) framework that combines a group-wise softmax formulation
while leveraging activity information and action ordering for logit adjustment.
The proposed framework significantly improves in segmenting tail actions
without any performance loss on head actions. |
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DOI: | 10.48550/arxiv.2408.09919 |