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Skeleton-to-Image Encoding: Enabling Skeleton Representation Learning via Vision-Pretrained Models

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Recent advances in large-scale pretrained vision models have demonstrated impressive capabilities across a wide range of downstream tasks, including cross-modal and multi-modal scenarios. However, their direct application to 3D human skeleton data remains challenging due to fundamental differences in data format. Moreover, the scarcity of large-scale skeleton datasets and the need to incorporate skeleton data into multi-modal action recognition without introducing additional model branches present significant research opportunities. To address these challenges, we introduce Skeleton-to-Image Encoding (S2I), a novel representation that transforms skeleton sequences into image-like data by partitioning and arranging joints based on body-part semantics and resizing to standardized image dimensions. This encoding enables, for the first time, the use of powerful vision-pretrained models for self-supervised skeleton representation learning, effectively transferring rich visual-domain knowledge to skeleton analysis. While existing skeleton methods often design models tailored to specific, homogeneous skeleton formats, they overlook the structural heterogeneity that naturally arises from diverse data sources. In contrast, our S2I representation offers a unified image-like format that naturally accommodates heterogeneous skeleton data. Extensive experiments on NTU-60, NTU-120, and PKU-MMD demonstrate the effectiveness and generalizability of our method for self-supervised skeleton representation learning, including under challenging cross-format evaluation settings.

Siyuan Yang, Jun Liu, Hao Cheng, Chong Wang, Shijian Lu, Hedvig Kjellstrom, Weisi Lin, Alex C. Kot• 2026

Related benchmarks

TaskDatasetResultRank
Action RecognitionNTU-60 (xsub)
Accuracy93.1
223
Action RecognitionNTU-120 (cross-subject (xsub))
Accuracy90.2
211
Action RecognitionNTU 120 (Cross-Setup)
Accuracy91.2
203
Action RecognitionNTU-60 (xview)
Accuracy97.7
117
Action RecognitionPKU-MMD Part I
Accuracy92.3
74
Action RecognitionPKU-MMD (Part II)
Accuracy62
71
Action RecognitionNTU 60 (X-sub)
Accuracy (10% data)88.3
35
Action RecognitionPKUMMD II Transfer learning
Accuracy73.9
24
Action RecognitionNTU-60 (C-view)
Accuracy89.7
16
Action RecognitionNTU-60 (C-view)
Accuracy (10% Data)91.7
14
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