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Classify vehicles in traffic scene images with deformable part-based models

机译:使用基于零件的可变形模型对交通场景图像中的车辆进行分类

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摘要

Abstract Vehicle classification is an important and challenging task in intelligent transportation systems, which has a wide range of applications. In this paper, we propose to integrate vehicle detection and vehicle classification into one single framework by using deformable part-based models. First of all, we use annotated vehicle images to train a deformable part-based model for each class of vehicles to be classified. Then, given a traffic scene image, we employ the obtained vehicle models to perform vehicle detection in it for vehicle extraction. After that, model alignment is performed on the extracted image crop, based on which features are extracted for creating a representation for the vehicle in the given image. We train a linear multi-class Support Vector Machine classifier based on representations of images in a validation set. Finally, we adopt the SVM classifier for vehicle classification. The proposed method is evaluated on the BIT-Vehicle Dataset, and can achieve an accuracy of $$91.08%$$ 91.08 % , which is superior to methods used for comparison. Obtained results demonstrated the effectiveness of the proposed method.
机译:摘要车辆分类是智能交通系统中一项重要而具有挑战性的任务,具有广泛的应用范围。在本文中,我们建议通过使用基于零件的可变形模型将车辆检测和车辆分类集成到一个框架中。首先,我们使用带注释的车辆图像来为每个要分类的车辆类别训练基于可变形零件的模型。然后,给定交通场景图像,我们使用获得的车辆模型在其中执行车辆检测以提取车辆。之后,对提取的图像裁剪进行模型对齐,基于该特征提取特征以在给定图像中创建车辆的表示。我们基于验证集中的图像表示来训练线性多类支持向量机分类器。最后,我们采用SVM分类器进行车辆分类。该方法在BIT车辆数据集上进行了评估,可达到$ 91.08%$ 91.08%的精度,优于用于比较的方法。获得的结果证明了该方法的有效性。

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