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Improved HOG Descriptors in Image Classification with CP Decomposition

机译:使用CP分解改进的图像分类中的猪描述符

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Histogram of Oriented Gradients (HOG) has been widely used in computer vision as feature descriptors for detecting objects in scenes. We present in this paper a new approach to HOG in image classification that will provide an opportunity to explore new ways to improve the effectiveness of HOG image descriptors. We investigate applying tensor decomposition on HOG descriptors then using them as image features to build image models using support vector machine. The aim of this approach is to produce a more robust and compact version of HOG features. An image classification experiment is performed to evaluate the effectiveness of this approach as well as to identify all ideal parameter values involved. Experimental results show a good improvement in image classification rate for the proposed approach.
机译:面向导向梯度(HOG)的直方图已广泛用于计算机视觉中,作为用于检测场景中对象的特征描述符。我们在本文中展示了一种新的猪在图像分类中的新方法,将提供探索提高猪图像描述符的有效性的新方法的机会。我们调查对猪描述符的应用张量分解,然后使用它们作为图像特征,以使用支持向量机构建图像模型。这种方法的目的是产生一种更强大而紧凑的猪特征。执行图像分类实验以评估这种方法的有效性以及识别所涉及的所有理想参数值。实验结果表明提出的方法的图像分类率良好。

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