融合多个深度神经网络的车辆再识别

Chao Cui, N. Sang, Changxin Gao, Lei Zou
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引用次数: 19

摘要

随着监控摄像机在公共安全领域的应用爆炸式增长,车辆再识别已成为一项基本任务。目前应用最广泛的解决方案是基于车牌验证。但是当面对无证车辆、甲板车等车牌信息错误或丢失的情况时,车辆搜索仍然是一个具有挑战性的问题。本文提出了一种基于深度学习的车辆再识别方法,该方法利用双分支Multi-DNN融合暹罗神经网络(MFSNN)将挡风玻璃上颜色、模型和粘贴标记的分类输出融合到欧几里得空间中,在欧几里得空间中,距离可以直接用来度量任意两辆车的相似性。为了实现这一目标,我们提出了一种基于Alex网络的车辆颜色识别方法,一种基于VGG网络的车辆模型识别方法,一种基于Faster R-CNN的粘贴标记检测与识别方法。我们在车辆id数据集和实验中评估了我们的MFSNN方法。实验结果表明,该方法能取得较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vehicle re-identification by fusing multiple deep neural networks
Vehicle re-identification has become a fundamental task because of the growing explosion in the use of surveillance cameras in public security. The most widely used solution is based on license plate verification. But when facing the vehicle without a license, deck cars and other license plate information error or missing situation, vehicle searching is still a challenging problem. This paper proposed a vehicle re-identification method based on deep learning which exploit a two-branch Multi-DNN Fusion Siamese Neural Network (MFSNN) to fuses the classification outputs of color, model and pasted marks on the windshield and map them into a Euclidean space where distance can be directly used to measure the similarity of arbitrary two vehicles. In order to achieve this goal, we present a method of vehicle color identification based on Alex net, a method of vehicle model identification based on VGG net, a method of pasted marks detection and identification based on Faster R-CNN. We evaluate our MFSNN method on VehicleID dataset and in the experiment. Experiment results show that our method can achieve promising results.
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