基于深度学习的增强车辆再识别方法

Ashutosh Holla B, M. M, Ujjwal Verma, R. Pai
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引用次数: 1

摘要

近年来,全球都致力于发展强大的智能交通系统(ITS),以通过减少频繁的交通问题来提高交通效率。车辆再识别作为智能交通系统的一个应用,在计算机视觉和机器人领域引起了广泛的关注。开发了基于卷积神经网络(CNN)的方法来执行车辆再识别,以解决遮挡、光照变化、尺度等关键挑战。变压器在计算机视觉方面的进步为进一步探索重新识别过程以提高性能提供了机会。本文开发了一个跨闭路电视摄像机进行车辆再识别的框架。为了进行重新识别,所提出的框架融合了使用CNN和变压器模型学习到的车辆表示。该框架在一个数据集上进行了测试,该数据集包含了20个闭路电视摄像机观察到的81个唯一车辆身份。从实验中可以看出,融合后的车辆再识别框架的mAP值为61.73%,明显优于独立的CNN或变压器模型。
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Enhanced Vehicle Re-identification for ITS: A Feature Fusion approach using Deep Learning
In recent years, the development of robust Intelligent transportation systems (ITS) is tackled across the globe to provide better traffic efficiency by reducing frequent traffic problems. As an application of ITS, vehicle re-identification has gained ample interest in the domain of computer vision and robotics. Convolutional neural network (CNN) based methods are developed to perform vehicle re-identification to address key challenges such as occlusion, illumination change, scale, etc. The advancement of transformers in computer vision has opened an opportunity to explore the re-identification process further to enhance performance. In this paper, a framework is developed to perform the re-identification of vehicles across CCTV cameras. To perform re-identification, the proposed framework fuses the vehicle representation learned using a CNN and a transformer model. The framework is tested on a dataset that contains 81 unique vehicle identities observed across 20 CCTV cameras. From the experiments, the fused vehicle re-identification framework yields an mAP of 61.73% which is significantly better when compared with the standalone CNN or transformer model.
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