基于Gram变换的家具图像风格分类模型

Xin Du
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引用次数: 1

摘要

随着电子商务的发展,商品的种类越来越多样化。基于风格等审美属性的商品分类是对传统分类技术的重要补充。针对一般模型对家具图像风格特征定义不清、提取困难、分类效果差等问题,设计了一种基于Gram变换的家具图像分类模型FISC。FISC模型基于卷积神经网络技术,提取图像的高级内容特征,进行Gram变换作为风格特征输入到分类器进行分类识别。目前,公开的图像样式数据集很少。在本研究中,为了实验的客观性和针对性,我们构建了一个家具图像风格属性标签数据集。对模型进行了充分的实验比较,最终训练集和测试集的准确率分别为99.23%和94%,充分验证了FISC模型在家具图像风格分类任务上的优越性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FISC: Furniture image style classification model based on Gram transformation
With the development of e-commerce, the types of commodities are becoming more diversified. Classification of commodities based on aesthetic attributes such as style is an important supplement to traditional classification techniques. Aiming at the problems of an unclear definition of furniture image style features, difficulty in extraction, and poor classification effect of general models, we design a furniture image classification model FISC based on Gram transformation. The FISC model is based on convolutional neural network technology, which extracts high-level content features of the image and performs Gram transformation as style features and inputs to the classifier for classification and recognition. At present, there are few public image style data sets. In this study, we build a data set of furniture image style attribute tags for the objectivity and pertinence of the experiment. The model has been fully experimentally compared, and the accuracy of the final training set and test set are 99.23% and 94% respectively, which fully verifies the superior performance of the FISC model on the task of furniture image style classification.
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