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Improving Temporal Action Segmentation via Constraint-Aware Decoding

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Temporal action segmentation (TAS) divides untrimmed videos into labeled action segments. While fully supervised methods have advanced the field, challenges such as action variability, ambiguous boundaries, and high annotation costs remain, especially in new or low-resource domains. Grammar-based approaches improve segmentation with structural priors but rely on complex parsing limiting scalability. In this work, we propose a lightweight, constraint-based refinement framework that enhances TAS predictions by integrating statistical structural priors such as transition confidence, action boundary sets, and per-class duration, that can be directly extracted from annotated data. These constraints are integrated into a modified Viterbi decoding algorithm, allowing inference-time refinement without retraining or added model complexity. Our approach improves both fully and semi-supervised TAS models by correcting structural prediction errors while maintaining high efficiency. Code is available at https://github.com/LUNAProject22/CAD

Yeo Keat Ee, Debaditya Roy, Chen Li, Hao Zhang, Basura Fernando• 2026

Related benchmarks

TaskDatasetResultRank
Temporal action segmentation50Salads
Accuracy82.9
117
Temporal action segmentationBreakfast
Accuracy74.6
107
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