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Cross-Modality Person ReID with Maximum Intra-class Triplet Loss

机译:跨型号人物Reid,具有最大类内的三联损失

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Compared with conventional ReID task, RGB-IR person re-identification is more significant and challenging owing to enormous cross-modality variations between RGB and infrared images. Most existing cross-modality person re-identification approaches in the infrared and visible domains use the joint training of traditional triplet loss and CE loss to reduce the discrepancy between two modalities. However, as the model gradually converges, the number of positive and negative sample pairs that can be optimized by traditional triplet loss also decreases. In this paper, we adopt a dual-stream CNN structure and propose a maximum intra-class distance to triplet loss (MICT loss) for RGB-IR ReID task. The proposed method enjoys several advantages. First, it can learn specific modal information and shared information better through the CNN structure of the dual-stream branch. Second, it can add the optimization of intra-class cross-modality distance to the traditional triplet loss, which can effectively reduce the intra-class distance and increase the training difficulty of the model. Experimental results demonstrate that our proposed algorithm performs favorably against the state-of-the-art methods that rank-1 accuracy is 61.71% and mAP is 58.06% on SYSU-MM01 dataset.
机译:与传统的Reid任务相比,由于RGB和红外图像之间的巨大跨态变化,RGB-IR人员重新识别更为显着和挑战。红外和可见域中的大多数现有的跨型号人重新识别方法使用传统三态损失和CE损失的联合培训,以减少两种方式之间的差异。然而,随着模型逐渐收敛,可以通过传统的三态损耗优化的正和负样品对的数量也降低。在本文中,我们采用了双流CNN结构,并提出了用于RGB-IR REID任务的三重损耗(MICT损耗)的最大类内距离。该方法享有多种优点。首先,它可以通过双流分支的CNN结构来学习特定的模态信息和共享信息。其次,它可以将级别的跨型号距离的优化添加到传统的三态损耗,这可以有效地降低了类内距离并增加了模型的训练难度。实验结果表明,我们所提出的算法对最先进的方法进行了有利的,即秩-1的准确度为61.71%,Sysu-MM01数据集上的映射为58.06%。

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