Recently, vehicle similarity learning, also called re-identification (ReID), has attracted significant attention in computer vision. Several algorithms have been developed and obtained considerable success. However, most existing methods have unpleasant performance in the hazy scenario due to poor visibility. Though some strategies are possible to resolve this problem, they still have room to be improved due to the limited performance in real-world scenarios and the lack of real-world clear ground truth. Thus, to resolve this problem, inspired by CycleGAN, we construct a training paradigm called \textbf{RVSL} which integrates ReID and domain transformation techniques. The network is trained on semi-supervised fashion and does not require to employ the ID labels and the corresponding clear ground truths to learn hazy vehicle ReID mission in the real-world haze scenes. To further constrain the unsupervised learning process effectively, several losses are developed. Experimental results on synthetic and real-world datasets indicate that the proposed method can achieve state-of-the-art performance on hazy vehicle ReID problems. It is worth mentioning that although the proposed method is trained without real-world label information, it can achieve competitive performance compared to existing supervised methods trained on complete label information.
翻译:最近,车辆相似性学习,也称为重新识别(ReID),在计算机愿景中引起了极大关注。若干算法已经开发并取得了相当大的成功。然而,由于可见度差,大多数现有方法在隐蔽情景中的表现不尽人意。虽然有些战略可以解决这个问题,但由于现实世界情景中的绩效有限,缺乏真实世界明确的地面真相,这些方法仍有改进的余地。因此,在CypeGAN的启发下,为了解决这一问题,我们建立了一个培训模式,名为\ textb{RVSL},将ReID和域域变技术融合在一起。这个网络是半监督式的,不需要使用ID标签和相应的明确地面真相来学习在现实世界阴影环境中的隐蔽车辆ReID任务。为了进一步限制不受监督的学习过程,已经开发了一些损失。合成和真实世界数据集的实验结果表明,拟议的方法可以实现对回收车辆的先进性能。值得一提的是,虽然拟议的方法是在没有实体世界标签的情况下培训的完整方法,但是没有经过对现行信息加以监督,但能够实现竞争性。