Vehicle classification in congested traffic based on 3D point cloud using SVM and KNN

Porn-anan Raktrakulthum, C. Netramai
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引用次数: 10

Abstract

The vehicle classification in congested traffic is a big challenge due to the difficulty to segment packs of different vehicles that stand still next to each other or travel at a very low speed. In this work, a low-cost vision system was designed and built to acquire the image and to generate 3D point cloud to be used as input for the classification process. The vehicle classification uses machine learning K-Nearest Neighbor (KNN) and Support Vector Machine (SVM) with radial basis function kernel to classify two types of vehicle which are car and motorcycle based on 3D point cloud. The processing of the training data and test data can be divided into filtering, segmentation, tracking, and feature extraction, respectively. The extracted feature vectors are then used for both KNN and SVM classifiers. The results show that the proposed performs well even in high congested traffic with a mix of both vehicle's type. This can be seen from the TPR for car classification from both KNN and SVM which is relatively high (KNN=95.8% and SVM=95.8%) compared to other existing systems. In case of motorcycle classification, the SVM classifier performs better compared to KNN in all three different traffic conditions.
基于SVM和KNN的三维点云交通拥堵车辆分类
在拥挤的交通中,车辆分类是一个很大的挑战,因为很难对彼此相邻静止或以非常低的速度行驶的不同车辆进行分类。在这项工作中,设计并构建了一个低成本的视觉系统来获取图像并生成3D点云作为分类过程的输入。车辆分类采用基于三维点云的机器学习k近邻(KNN)和径向基函数核的支持向量机(SVM)对汽车和摩托车两类车辆进行分类。训练数据和测试数据的处理可分为过滤、分割、跟踪和特征提取。然后将提取的特征向量用于KNN和SVM分类器。结果表明,即使在两种车辆类型混合的高度拥挤交通中,所提出的方法也具有良好的性能。这可以从KNN和SVM对汽车分类的TPR中看出,与其他现有系统相比,KNN和SVM的TPR都比较高(KNN=95.8%, SVM=95.8%)。在摩托车分类的情况下,SVM分类器在三种不同的交通条件下都比KNN表现更好。
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