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Vehicle classification approach based on the combined texture and shape features with a compressive DL

机译:基于组合的纹理和形状特征以及压缩DL的车辆分类方法

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摘要

Automatic vehicle classification is a fundamental task in intelligent transportation systems. Image-based vehicle classification is challenging due to occlusion, low-illumination, and scale change. This study proposes an innovative approach by combining texture and shape features into a complementary feature and using the complementary feature to train a compressive dictionary to improve accuracy and efficiency. In the feature combination, the scale-invariant feature transform descriptor is applied to extract the texture and shape features from the original vehicle images and their edge images, respectively. In the dictionary training, a compressive dictionary learning (DL) algorithm, called compressive K singular value decomposition (CKSVD) algorithm, is proposed to improve the dictionary training efficiency. The CKSVD algorithm divides the feature dictionary into several same-sized data blocks and then performs the DL in each data block based on a very sparse random projection matrix. On the feature combination and DL, the proposed approach employs the kernel sparse representation method to classify vehicles into four types: buses, trucks, vans, and sedans. The kernel sparse representation method enables the linearly inseparable classification in the combined feature space to be linearly separable. Experimental results show that the proposed approach can improve the accuracy and efficiency of vehicle classification.
机译:自动车辆分类是智能交通系统中的一项基本任务。由于遮挡,低照度和比例变化,基于图像的车辆分类具有挑战性。这项研究提出了一种创新的方法,将纹理和形状特征组合为一个互补特征,并使用该互补特征来训练压缩字典以提高准确性和效率。在特征组合中,比例尺不变特征变换描述符分别用于从原始车辆图像及其边缘图像中提取纹理和形状特征。在字典训练中,提出了一种称为压缩K奇异值分解(CKSVD)算法的压缩字典学习算法,以提高字典训练效率。 CKSVD算法将特征字典划分为几个相同大小的数据块,然后基于非常稀疏的随机投影矩阵在每个数据块中执行DL。在特征组合和DL上,提出的方法采用核稀疏表示方法将车辆分为四种类型:公共汽车,卡车,货车和轿车。内核稀疏表示方法使组合特征空间中的线性不可分分类成为线性可分离的。实验结果表明,该方法可以提高车辆分类的准确性和效率。

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