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Study on Machine Learning Algorithms to Automatically Identifying Body Type for Clothing Model Recommendation

机译:机器学习算法自动识别车身类型的服装模型推荐研究

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The task of automatically identify body type with high accuracy is still a relevant problem in clothing fashion settings. This paper addresses such problem, presenting a study on machine learning techniques applied to classify women's body shapes, taking into account a small set of body attributes, in order to further find appropriate clothing models. Thus, we perform a comparative study on such techniques to evaluate the accuracy of four classifiers, aiming at selecting the best of them to be used for clothing model recommendation based on rules. Overall, in the conducted computational experiment, Random Forest and SVM methods had the best performance, but the other two had also very good results, demonstrating their effectiveness to automatically identifying body type, serving as a relevant information to be used in our rule-based system to provide clothing model recommendation.
机译:以高精度自动识别身体类型的任务仍然是服装时尚设置中的相关问题。本文涉及此类问题,提出了对应用程序的机器学习技术的研究,以考虑到一小一组身体属性,以进一步找到适当的服装模型。因此,我们对评估四分类机的准确性的这种技术进行比较研究,旨在根据规则选择最佳选择以用于服装模型推荐。总体而言,在进行的计算实验中,随机森林和SVM方法具有最佳性能,但另外两个也非常好,展示了他们自动识别体型的有效性,作为我们规则的相关信息系统提供服装模型推荐。

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