论文标题

全球监督的对比损失和基于视图的车辆重新识别的后处理

Global-Supervised Contrastive Loss and View-Aware-Based Post-Processing for Vehicle Re-Identification

论文作者

Hu, Zhijun, Xu, Yong, Wen, Jie, Cheng, Xianjing, Zhang, Zaijun, Sun, Lilei, Wang, Yaowei

论文摘要

在本文中,我们提出了一种全球监督的对比损失和一种基于视图的后加工(VABPP)方法,以进行车辆重新识别。传统的监督对比损失计算了批处理中特征的距离,因此它具有本地属性。尽管拟议的全球监督对比损失具有新的特性,并且具有良好的全球属性,但培训过程中每个锚的正面和负面特征来自整个训练集。所提出的VABPP方法是首次将基于视图的方法用作车辆重新识别领域的后处理方法。 VABPP的优点是,首先,它仅在测试过程中使用,并且不会影响培训过程。其次,作为后处理方法,它可以轻松地集成到其他训练有素的Re-ID模型中。我们将通过本文中训练的模型计算出的视图对距离系数矩阵应用于另一个训练有素的RE-ID模型,而VABPP方法极大地提高了其性能,从而验证了VABPP方法的可行性。

In this paper, we propose a Global-Supervised Contrastive loss and a view-aware-based post-processing (VABPP) method for the field of vehicle re-identification. The traditional supervised contrastive loss calculates the distances of features within the batch, so it has the local attribute. While the proposed Global-Supervised Contrastive loss has new properties and has good global attributes, the positive and negative features of each anchor in the training process come from the entire training set. The proposed VABPP method is the first time that the view-aware-based method is used as a post-processing method in the field of vehicle re-identification. The advantages of VABPP are that, first, it is only used during testing and does not affect the training process. Second, as a post-processing method, it can be easily integrated into other trained re-id models. We directly apply the view-pair distance scaling coefficient matrix calculated by the model trained in this paper to another trained re-id model, and the VABPP method greatly improves its performance, which verifies the feasibility of the VABPP method.

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