English

CASR: Refining Action Segmentation via Marginalizing Frame-levle Causal Relationships

Computer Vision and Pattern Recognition 2024-01-29 v4 Multimedia

Abstract

Integrating deep learning and causal discovery has increased the interpretability of Temporal Action Segmentation (TAS) tasks. However, frame-level causal relationships exist many complicated noises outside the segment-level, making it infeasible to directly express macro action semantics. Thus, we propose Causal Abstraction Segmentation Refiner (CASR), which can refine TAS results from various models by enhancing video causality in marginalizing frame-level casual relationships. Specifically, we define the equivalent frame-level casual model and segment-level causal model, so that the causal adjacency matrix constructed from marginalized frame-level causal relationships has the ability to represent the segmnet-level causal relationships. CASR works out by reducing the difference in the causal adjacency matrix between we constructed and pre-segmentation results of backbone models. In addition, we propose a novel evaluation metric Causal Edit Distance (CED) to evaluate the causal interpretability. Extensive experimental results on mainstream datasets indicate that CASR significantly surpasses existing various methods in action segmentation performance, as well as in causal explainability and generalization.

Keywords

Cite

@article{arxiv.2311.12401,
  title  = {CASR: Refining Action Segmentation via Marginalizing Frame-levle Causal Relationships},
  author = {Keqing Du and Xinyu Yang and Hang Chen},
  journal= {arXiv preprint arXiv:2311.12401},
  year   = {2024}
}

Comments

We found that the paper needs to be modified in the model and all experiments must be re-run, so we request to withdraw the current version

R2 v1 2026-06-28T13:27:04.525Z