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Part-based Multi-stream Model for Vehicle Searching

机译:基于零件的多流车辆搜索模型

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Due to the enormous requirement in public security and intelligent transportation system, searching an identical vehicle has become more and more important. Current studies usually treat vehicle as an integral object and then train a distance metric to measure the similarity among vehicles. However, these raw images may be exactly similar to ones with different identification and include some pixels in background that may disturb the distance metric learning. In this paper, we propose a novel and useful method to segment an original vehicle image into several discriminative foreground parts, and these parts consist of some fine grained regions that are named discriminative patches. After that, these parts combined with the raw image are fed into the proposed deep learning network. We can easily measure the similarity of two vehicle images by computing the Euclidean distance of the features from FC layer. Two main contributions of this paper are as follows. Firstly, a method is proposed to estimate if a patch in a raw vehicle image is discriminative or not. Secondly, a new Part-based Multi-Stream Model (PMSM) is designed and optimized for vehicle retrieval and re-identification tasks. We evaluate the proposed method on the VehicleID dataset, and the experimental results show that our method can outperform the baseline.
机译:由于对公共安全和智能交通系统的巨大需求,寻找相同的车辆变得越来越重要。当前的研究通常将车辆视为不可或缺的对象,然后训练距离度量以测量车辆之间的相似性。但是,这些原始图像可能与具有不同标识的原始图像完全相似,并且在背景中包含一些可能会干扰距离度量学习的像素。在本文中,我们提出了一种新颖而有用的方法,将原始车辆图像分割成几个可区分的前景部分,这些部分由一些称为区分斑块的细颗粒区域组成。之后,将这些部分与原始图像结合到建议的深度学习网络中。通过计算特征与FC层的欧几里得距离,我们可以轻松地测量两个车辆图像的相似度。本文的两个主要贡献如下。首先,提出了一种方法来估计原始车辆图像中的补丁是否有区别。其次,针对车辆检索和重新识别任务设计并优化了新的基于零件的多流模型(PMSM)。我们在VehicleID数据集上评估了提出的方法,实验结果表明我们的方法可以胜过基线。

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