@Article{QingshanChen2023, author="Qingshan Chen and Zhenzhen Quan and Yujun Li and Chao Zhai and Mikhail Mozerov", title="An Unsupervised Domain Adaption Approach for Cross-Modality RGB-Infrared Person Re-Identification", journal="IEEE Sensors Journal", year="2023", volume="23", number="24", optkeywords="Q. Chen", optkeywords="Z. Quan", optkeywords="Y. Li", optkeywords="C. Zhai and M. G. Mozerov", abstract="Dual-camera systems commonly employed in surveillance serve as the foundation for RGB-infrared (IR) cross-modality person re-identification (ReID). However, significant modality differences give rise to inferior performance compared to single-modality scenarios. Furthermore, most existing studies in this area rely on supervised training with meticulously labeled datasets. Labeling RGB-IR image pairs is more complex than labeling conventional image data, and deploying pretrained models on unlabeled datasets can lead to catastrophic performance degradation. In contrast to previous solutions that focus solely on cross-modality or domain adaptation issues, this article presents an end-to-end unsupervised domain adaptation (UDA) framework for the cross-modality person ReID, which can simultaneously address both of these challenges. This model employs source domain classes, target domain clusters, and unclustered instance samples for the training, maximizing the comprehensive use of the dataset. Moreover, it addresses the problem of mismatched clustering labels between the two modalities in the target domain by incorporating a label matching module that reassigns reliable clusters with labels, ensuring correspondence between different modality labels. We construct the loss function by incorporating distinctiveness loss and multiplicity loss, both of which are determined by the similarity of neighboring features in the predicted feature space and the difference between distant features. This approach enables efficient feature clustering and cluster class assignment to occur concurrently. Eight UDA cross-modality person ReID experiments are conducted on three real datasets and six synthetic datasets. The experimental results unequivocally demonstrate that the proposed model outperforms the existing state-of-the-art algorithms to a significant degree. Notably, in RegDB {\textrightarrow} RegDB\_light, the Rank-1 accuracy exhibits a remarkable improvement of 8.24\%.", optnote="LAMP", optnote="exported from refbase (http://refbase.cvc.uab.es/show.php?record=3884), last updated on Tue, 06 Feb 2024 13:46:48 +0100", doi="10.1109/JSEN.2023.3325576", opturl="https://ieeexplore.ieee.org/document/10295407" }