CVNov 6, 2025

DINOv2 Driven Gait Representation Learning for Video-Based Visible-Infrared Person Re-identification

arXiv:2511.04281v11 citationsh-index: 8MM
Originality Incremental advance
AI Analysis

This work addresses cross-modal video matching for person re-identification, an incremental improvement by integrating gait features with appearance cues to enhance retrieval accuracy.

The paper tackles video-based visible-infrared person re-identification by leveraging gait features, which are modality-invariant and rich in temporal dynamics, to complement appearance cues, resulting in a framework that significantly outperforms existing state-of-the-art methods on HITSZ-VCM and BUPT datasets.

Video-based Visible-Infrared person re-identification (VVI-ReID) aims to retrieve the same pedestrian across visible and infrared modalities from video sequences. Existing methods tend to exploit modality-invariant visual features but largely overlook gait features, which are not only modality-invariant but also rich in temporal dynamics, thus limiting their ability to model the spatiotemporal consistency essential for cross-modal video matching. To address these challenges, we propose a DINOv2-Driven Gait Representation Learning (DinoGRL) framework that leverages the rich visual priors of DINOv2 to learn gait features complementary to appearance cues, facilitating robust sequence-level representations for cross-modal retrieval. Specifically, we introduce a Semantic-Aware Silhouette and Gait Learning (SASGL) model, which generates and enhances silhouette representations with general-purpose semantic priors from DINOv2 and jointly optimizes them with the ReID objective to achieve semantically enriched and task-adaptive gait feature learning. Furthermore, we develop a Progressive Bidirectional Multi-Granularity Enhancement (PBMGE) module, which progressively refines feature representations by enabling bidirectional interactions between gait and appearance streams across multiple spatial granularities, fully leveraging their complementarity to enhance global representations with rich local details and produce highly discriminative features. Extensive experiments on HITSZ-VCM and BUPT datasets demonstrate the superiority of our approach, significantly outperforming existing state-of-the-art methods.

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