CVMar 11

Less is More: Decoder-Free Masked Modeling for Efficient Skeleton Representation Learning

arXiv:2603.10648v274.4h-index: 17
Predicted impact top 37% in CV · last 90 daysOriginality Highly original
AI Analysis

This addresses a computational bottleneck for researchers and practitioners in skeleton-based action recognition, offering a more efficient alternative to existing methods.

The paper tackled the computational inefficiency and asymmetry in masked auto-encoder methods for skeleton-based action representation learning by proposing SLiM, a decoder-free framework that harmonizes masked modeling with contrastive learning, achieving state-of-the-art performance with a 7.89x reduction in inference computational cost.

The landscape of skeleton-based action representation learning has evolved from Contrastive Learning (CL) to Masked Auto-Encoder (MAE) architectures. However, each paradigm faces inherent limitations: CL often overlooks fine-grained local details, while MAE is burdened by computationally heavy decoders. Moreover, MAE suffers from severe computational asymmetry -- benefiting from efficient masking during pre-training but requiring exhaustive full-sequence processing for downstream tasks. To resolve these bottlenecks, we propose SLiM (Skeleton Less is More), a novel unified framework that harmonizes masked modeling with contrastive learning via a shared encoder. By eschewing the reconstruction decoder, SLiM not only eliminates computational redundancy but also compels the encoder to capture discriminative features directly. SLiM is the first framework with decoder-free masked modeling of representative learning. Crucially, to prevent trivial reconstruction arising from high skeletal-temporal correlation, we introduce semantic tube masking, alongside skeletal-aware augmentations designed to ensure anatomical consistency across diverse temporal granularities. Extensive experiments demonstrate that SLiM consistently achieves state-of-the-art performance across all downstream protocols. Notably, our method delivers this superior accuracy with exceptional efficiency, reducing inference computational cost by 7.89x compared to existing MAE methods.

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