基于pca的车辆分类框架

Chengcui Zhang, Xin Chen, Wei-bang Chen
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引用次数: 66

摘要

智能交通系统由于具有重要的现实意义,近年来成为一个活跃的研究领域。在本文中,我们提出了一个框架,它结合了智能交通系统的各个方面,其最终目标是车辆分类。给定交通视频序列,该系统首先对单个车辆进行分割。然后将提取的车辆对象归一化,使所有车辆沿同一方向对齐,并以相同的尺度测量。在预处理步骤之后,提出并实现了特征车辆和PCA-SVM两种分类算法,将车辆对象分为卡车、客车、货车和皮卡。这两种方法利用了主成分分析(PCA)在不同粒度和不同学习机制下的区别能力。通过实验对这两种方法进行了比较,结果证明了所提框架的有效性。
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A PCA-Based Vehicle Classification Framework
Due to its great practical importance, Intelligent Transportation System has been an active research area in recent years. In this paper, we present a framework that incorporates various aspects of an intelligent transportation system with its ultimate goal being vehicle classification. Given a traffic video sequence, the proposed system first proceeds to segment individual vehicles. Then the extracted vehicle objects are normalized so that all vehicles are aligned along the same direction and measured at the same scale. Following the preprocessing step, two classification algorithms - Eigenvehicle and PCA-SVM, are proposed and implemented to classify vehicle objects into trucks, passenger cars, vans, and pick-ups. These two methods exploit the distinguishing power of Principal Component Analysis (PCA) at different granularities with different learning mechanisms. Experiments are conducted to compare these two methods and the results demonstrate the effectiveness of the proposed framework.
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