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Multi-view Vehicle Re-Identification Method Based on Siamese Convolutional Neural Network Structure

机译:基于连续卷积神经网络结构的多视点车辆重新识别方法

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Vehicle re-identification is a popular issue in intelligent traffic research. A lot of proposed method achieve vehicle re-identification by recognizing their license plate, because of the uniqueness. However, license plate can be stolen and pinned to different vehicles by criminals to hide their identities. In addition, the license plate number might be covered by dirt or stain, even hided from different viewpoints, makes the character recognition result might be wrong or unrecognized. To get more robust re-identification result, not only the license plate should be considered, but also the appearance. In this paper, we adopt Siamese Convolutional Neural Network structure, take license plate and vehicle appearance as input, come up with a neural network for vehicle re-identification task. We validate our proposed method on VeRi-776 dataset, and proof that it can deal with vehicle re-identification task well, even under variant viewpoints scenarios.
机译:车辆重新识别是智能交通研究中的一个普遍问题。由于其独特性,许多提出的方法通过识别其车牌来实现车辆的重新识别。但是,犯罪分子可以盗窃车牌并将其固定在不同的车辆上,以隐藏其身份。另外,车牌号可能会被污垢或污渍覆盖,甚至从不同的角度隐藏起来,使字符识别结果可能错误或无法识别。为了获得更可靠的重新识别结果,不仅要考虑车牌,还要考虑外观。本文采用暹罗卷积神经网络结构,以车牌和车辆外观为输入,提出了用于车辆重新识别任务的神经网络。我们在VeRi-776数据集上验证了我们提出的方法,并证明即使在不同的视点场景下,该方法也可以很好地处理车辆重新识别任务。

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