Fine Classification Method of Product Image Based on Multi-Level Convolutional Neural Networks

Xuesong Jin, Xin Du, Xiaowei Han, Huadong Sun, Jing Li
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Abstract

To improve the classification accuracy of e-commerce product images, a classification method for multi-category product images is proposed. The classification method is based on Convolutional Neural Networks, imitating human shopping habits and combining the features of product images, summarizing the images into multiple levels of parent and child categories, and adopting multiple classifiers to convolve the neural network from bottom to top The attention of the network is put on the global features of the parent categories and the local features of the child categories. The classification is trained layer by layer, and the weighted calculation is performed to obtain the final classification result.
基于多层卷积神经网络的产品图像精细分类方法
为了提高电子商务产品图像的分类精度,提出了一种多品类产品图像的分类方法。该分类方法基于卷积神经网络,模仿人类购物习惯,结合产品图像的特征,将图像汇总为父类和子类的多个层次,并采用多个分类器对神经网络进行自下而上的卷积,将网络的注意力放在父类的全局特征和子类的局部特征上。对分类进行逐层训练,并进行加权计算,得到最终分类结果。
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