Multi-modal Gait Recognition via Effective Spatial-Temporal Feature Fusion

Yufeng Cui, Yimei Kang
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引用次数: 6

Abstract

Gait recognition is a biometric technology that identifies people by their walking patterns. The silhouettes-based method and the skeletons-based method are the two most popular approaches. However, the silhouette data are easily affected by clothing occlusion, and the skeleton data lack body shape information. To obtain a more robust and comprehensive gait representation for recognition, we propose a transformer-based gait recognition framework called MMGaitFormer, which effectively fuses and aggregates the spatial-temporal information from the skeletons and silhouettes. Specifically, a Spatial Fusion M odule (SFM) and a Temporal Fusion Module (TFM) are proposed for effective spatial-level and temporal-level feature fusion, respectively. The SFM performs fine-grained body parts spatial fusion and guides the alignment of each part of the silhouette and each joint of the skeleton through the attention mechanism. The TFM performs temporal modeling through Cycle Position Embedding (CPE) andfuses temporal information of two modalities. Experiments demonstrate that our MMGaitFormer achieves state-of-the-art performance on popular gait datasets. For the most challenging “CL” (i.e., walking in different clothes) condition in CASIA-B, our method achieves a rank-l accuracy of 94. 8%, which outperforms the state-of-the-art single-modal methods by a large margin.
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基于有效时空特征融合的多模态步态识别
步态识别是一种生物识别技术,通过人们的行走方式来识别他们。基于轮廓的方法和基于骨架的方法是两种最流行的方法。然而,廓形数据容易受到服装遮挡的影响,骨骼数据缺乏体型信息。为了获得更鲁棒和全面的步态识别表示,我们提出了一种基于变换的步态识别框架MMGaitFormer,该框架有效地融合和聚合了来自骨骼和轮廓的时空信息。具体而言,提出了空间融合模块(SFM)和时间融合模块(TFM),分别用于有效的空间级和时间级特征融合。SFM进行细粒度的身体部位空间融合,并通过注意力机制引导轮廓的每个部分和骨骼的每个关节的对齐。TFM通过周期位置嵌入(CPE)进行时间建模,融合两模态的时间信息。实验表明,我们的MMGaitFormer在常用的步态数据集上取得了最先进的性能。对于CASIA-B中最具挑战性的“CL”(即穿着不同的衣服行走)条件,我们的方法达到了94的rank- 1精度。8%,大大优于最先进的单模态方法。
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