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Unsupervised Action Segmentation

Unsupervised Action Segmentation is a challenging problem in high-level video understanding, where the goal is to segment a temporally untrimmed sequence into distinct action segments without access to ground truth labels during training. Unlike supervised methods, which rely on annotated datasets, unsupervised approaches aim to discover the underlying structure of actions directly from data. This makes the task particularly valuable for scenarios with limited labeled data or large-scale unlabeled video datasets. The results of Unsupervised Action Segmentation can be further applied to tasks such as action localization and video summarization.

Papers

Showing 110 of 16 papers

TitleStatusHype
Hierarchical Vector Quantization for Unsupervised Action SegmentationCode1
Transformer with Controlled Attention for Synchronous Motion CaptioningCode0
Temporally Consistent Unbalanced Optimal Transport for Unsupervised Action SegmentationCode2
Permutation-Aware Action Segmentation via Unsupervised Frame-to-Segment AlignmentCode1
Leveraging triplet loss for unsupervised action segmentationCode1
TAEC: Unsupervised Action Segmentation with Temporal-Aware Embedding and Clustering0
Fast and Unsupervised Action Boundary Detection for Action Segmentation0
Unsupervised Action Segmentation for Instructional Videos0
Unsupervised Action Segmentation by Joint Representation Learning and Online ClusteringCode1
Action Shuffle Alternating Learning for Unsupervised Action Segmentation0
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