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Local perspective based synthesis for vehicle re-identification: A transformation state adversarial method

机译:基于局部透视的车辆重识别合成:一种转换状态对抗方法

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摘要

Vehicle re-identification (V-ReID) aims at discovering an image of a specific vehicle from a set of images typically captured by different cameras. Vehicles are one of the most important objects in cross-camera target recognition systems, and recognizing them is one of the most difficult tasks due to the subtle differences in the visible characteristics of vehicle rigid objects. Compared to various methods that can improve re-identification accuracy, data augmentation is a more straightforward and effective technique. In this paper, we propose a novel data synthesis method for V-ReID based on local-region perspective transformation, transformation state adversarial learning and a candidate pool. Specifically, we first propose a parameter generator network, which is a lightweight convolutional neural network, to generate the transformation states. Secondly, an adversarial module is designed in our work, it ensures that noise information is added as much as possible while keeping the labeling and structure of the dataset intact. With this adversarial module, we are able to promote the performance of the network and generate more proper and harder training samples. Furthermore, we use a candidate pool to store harder samples for further selection to improve the performance of the model. Our system pays more balanced attention to the features of vehicles. Extensive experiments show that our method significantly boosts the performance of V-ReID on the VeRi-776, VehicleID and VERI-Wild datasets.
机译:车辆重新识别 (V-ReID) 旨在从通常由不同摄像头捕获的一组图像中发现特定车辆的图像。车辆是跨摄像头目标识别系统中最重要的物体之一,由于车辆刚性物体的可见特性存在细微差异,识别车辆是最困难的任务之一。与各种可以提高重识别准确性的方法相比,数据增强是一种更直接、更有效的技术。在本文中,我们提出了一种基于局部区域视角变换、变换状态对抗学习和候选池的V-ReID数据合成方法。具体来说,我们首先提出了一个参数生成器网络,这是一个轻量级的卷积神经网络,用于生成变换状态。其次,在我们的工作中设计了一个对抗模块,它保证了在保持数据集的标注和结构完整的同时,尽可能地添加噪声信息。通过这个对抗模块,我们能够提升网络的性能,并生成更合适、更难的训练样本。此外,我们使用候选池来存储更难的样本,以便进一步选择,以提高模型的性能。我们的系统更加平衡地关注车辆的功能。大量实验表明,该方法显著提升了V-ReID在VeRi-776、VehicleID和VERI-Wild数据集上的性能。

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