Micro-DualNet: Dual-Path Spatio-Temporal Network for Micro-Action Recognition
Naga VS Raviteja Chappa, Evangelos Sariyanidi, Lisa Yankowitz, Gokul Nair, Casey J. Zampella + 2 more
TLDR
Micro-DualNet is a dual-path spatio-temporal network that improves micro-action recognition by adaptively processing diverse spatial and temporal characteristics.
Key contributions
- Micro-DualNet uses parallel ST and TS pathways for diverse micro-action spatio-temporal processing.
- Introduces entity-level adaptive routing, allowing body parts to learn optimal processing preferences.
- Employs Mutual Action Consistency (MAC) loss to enforce cross-path coherence and improve learning.
- Achieves state-of-the-art results on the iMiGUE dataset for fine-grained micro-action recognition.
Why it matters
Micro-actions are crucial for social communication but poorly understood due to their diverse spatio-temporal nature. This paper's architectural adaptation directly addresses this challenge, significantly advancing fine-grained video understanding by providing a novel way to process subtle human movements.
Original Abstract
Micro-actions are subtle, localized movements lasting 1-3 seconds such as scratching one's head or tapping fingers. Such subtle actions are essential for social communication, ubiquitously used in natural interactions, and thus critical for fine-grained video understanding, yet remain poorly understood by current computer vision systems. We identify a fundamental challenge: micro-actions exhibit diverse spatio-temporal characteristics where some are defined by spatial configurations while others manifest through temporal dynamics. Existing methods that commit to a single spatio-temporal decomposition cannot accommodate this diversity. We propose a dual-path network that processes anatomically-grounded spatial entities through parallel Spatial-Temporal (ST) and Temporal-Spatial (TS) pathways. The ST path captures spatial configurations before modeling temporal dynamics, while the TS path inverts this order to prioritize temporal dynamics. Rather than fixed fusion, we introduce entity-level adaptive routing where each body part learns its optimal processing preference, complemented by Mutual Action Consistency (MAC) loss that enforces cross-path coherence. Extensive experiments demonstrate competitive performance on MA-52 dataset and state-of-the-art results on iMiGUE dataset. Our work reveals that architectural adaptation to the inherent complexity of micro-actions is essential for advancing fine-grained video understanding.
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