论文标题

歧视区域的关注和用于车辆重新识别的正交视图生成模型

Discriminative-Region Attention and Orthogonal-View Generation Model for Vehicle Re-Identification

论文作者

Li, Huadong, Wang, Yuefeng, Wei, Ying, Wang, Lin, Ge, Li

论文摘要

迫切要求车辆重新识别(RE-ID)减轻城市交通管理繁重的任务造成的压力。多重挑战阻碍了基于视觉的车辆重新ID方法的应用:(1)同一品牌/模型的不同车辆的外观通常相似;但是,(2)同一车辆的外观与不同的观点显着不同。先前的方法主要使用手动注释的多属性数据集来帮助网络获取详细的提示并推断多视图以改善车辆重新ID性能。但是,在实际应用程序方案中,标记的车辆数据集通常是无法实现的。因此,我们提出了一个歧视区域的关注和正交视图生成(DRA-ovg)模型,该模型仅需要身份(ID)标签来征服车辆重新ID的多重挑战。拟议的DRA模型可以自动提取歧视区域特征,从而可以区分类似的车辆。 OVG模型可以基于输入视图功能生成多视图功能,以减少视图不匹配的影响。最后,车辆外观之间的距离是由判别区域特征和多视图特征一起提出的。因此,在AC完全特征空间中,车辆之间成对距离测量的重要性增强了。广泛的实验证实了每种提出的成分的有效性,实验结果表明,我们的方法对汽车和VERI-776数据集的状态车辆重新ID方法进行了显着改进。

Vehicle re-identification (Re-ID) is urgently demanded to alleviate thepressure caused by the increasingly onerous task of urban traffic management. Multiple challenges hamper the applications of vision-based vehicle Re-ID methods: (1) The appearances of different vehicles of the same brand/model are often similar; However, (2) the appearances of the same vehicle differ significantly from different viewpoints. Previous methods mainly use manually annotated multi-attribute datasets to assist the network in getting detailed cues and in inferencing multi-view to improve the vehicle Re-ID performance. However, finely labeled vehicle datasets are usually unattainable in real application scenarios. Hence, we propose a Discriminative-Region Attention and Orthogonal-View Generation (DRA-OVG) model, which only requires identity (ID) labels to conquer the multiple challenges of vehicle Re-ID.The proposed DRA model can automatically extract the discriminative region features, which can distinguish similar vehicles. And the OVG model can generate multi-view features based on the input view features to reduce the impact of viewpoint mismatches. Finally, the distance between vehicle appearances is presented by the discriminative region features and multi-view features together. Therefore, the significance of pairwise distance measure between vehicles is enhanced in acomplete feature space. Extensive experiments substantiate the effectiveness of each proposed ingredient, and experimental results indicate that our approach achieves remarkable improvements over the state- of-the-art vehicle Re-ID methods on VehicleID and VeRi-776 datasets.

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