Min Liu;Zhu Zhang;Yuan Bian;Xueping Wang;Yeqing Sun;Baida Zhang;Yaonan Wang
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引用次数: 0
Abstract
Visible-infrared person re-identification (VI-ReID) seeks to identify and match individuals across visible and infrared ranges within intelligent monitoring environments. Most current approaches predominantly explore a two-stream network structure that extract global or rigidly split part features and introduce an extra modality for image compensation to guide networks reducing the huge differences between the two modalities. However, these methods are sensitive to misalignment caused by pose/viewpoint variations and additional noises produced by extra modality generating. Within the confines of this articles, we clearly consider addresses above issues and propose a Cross-modality Semantic Consistency Learning (CSCL) network to excavate the semantic consistent features in different modalities by utilizing human semantic information. Specifically, a Parsing-aligned Attention Module (PAM) is introduced to filter out the irrelevant noises with channel-wise attention and dynamically highlight the semantic-aware representations across modalities in different stages of the network. Then, a Semantic-guided Part Alignment Module (SPAM) is introduced, aimed at efficiently producing a collection of semantic-aligned fine-grained features. This is achieved by incorporating parsing loss and division loss constraints, ultimately enhancing the overall person representation. Finally, an Identity-aware Center Mining (ICM) loss is presented to reduce the distribution between modality centers within classes, thereby further alleviating intra-class modality discrepancies. Extensive experiments indicate that CSCL outperforms the state-of-the-art methods on the SYSU-MM01 and RegDB datasets. Notably, the Rank-1/mAP accuracy on the SYSU-MM01 dataset can achieve 75.72%/72.08%.
可见红外人员再识别(VI-ReID)旨在识别和匹配智能监控环境中可见和红外范围内的个人。目前大多数方法主要探索两流网络结构,提取全局或刚性分割部分特征,并引入额外的图像补偿模态来指导网络,减少两种模态之间的巨大差异。然而,这些方法对姿态/视点变化引起的不对准和额外模态生成产生的额外噪声很敏感。在本文的范围内,我们清楚地考虑了上述问题,并提出了一个跨模态语义一致性学习(CSCL)网络,利用人类的语义信息挖掘不同模态下的语义一致性特征。具体地说,引入了一个与解析对齐的注意模块(PAM)来过滤掉具有信道智能注意的不相关噪声,并在网络的不同阶段动态突出跨模态的语义感知表示。然后,引入了语义引导的零件对齐模块(SPAM),旨在有效地生成语义对齐的细粒度特征集合。这是通过结合解析损失和除法损失约束来实现的,最终增强了整体的人物表示。最后,提出了一种身份感知中心挖掘(Identity-aware Center Mining, ICM)方法来减少类内模态中心之间的分布,从而进一步缓解类内模态差异。大量实验表明,CSCL在SYSU-MM01和RegDB数据集上优于最先进的方法。值得注意的是,SYSU-MM01数据集上的Rank-1/mAP精度可以达到75.72%/72.08%。
期刊介绍:
The IEEE Transactions on Multimedia delves into diverse aspects of multimedia technology and applications, covering circuits, networking, signal processing, systems, software, and systems integration. The scope aligns with the Fields of Interest of the sponsors, ensuring a comprehensive exploration of research in multimedia.