An Efficient Machine Learning based Model for Classification of Wearable Clothing

Judy Simon
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Abstract

Computer vision research and its applications in the fashion industry have grown popular due to the rapid growth of information technology. Fashion detection is increasingly popular because most fashion goods need detection before they could be worn. Early detection of the human body component of the input picture is necessary to determine where the garment area is and then synthesize it. For this reason, detection is the starting point for most of the in-depth research. The cloth detection of landmarks is retrieved through many feature items that emphasis on fashionate things. The feature extraction can be done for better accuracy, pose and scale transmission. These convolution filters extract the features through many epochs and max-pooling layers in the neural networks. The optimized classification has been done using SVM in this study, for attaining overall high efficiency. This proposed CNN approach fashionate things prediction is combined with SVM for better classification. Furthermore, the classification error is minimized through the evaluation procedure for obtaining better accuracy. Finally, this research work has attained good accuracy and other performance metrics than the different traditional approaches. The benchmark datasets, current methodologies, and performance comparisons are all reorganized for each piece.
基于机器学习的可穿戴服装分类模型
由于信息技术的快速发展,计算机视觉研究及其在时尚行业的应用越来越受欢迎。时尚检测越来越受欢迎,因为大多数时尚商品在穿之前都需要检测。早期检测输入图像的人体成分,确定服装区域的位置,然后进行合成是必要的。因此,检测是大多数深入研究的起点。地标的布料检测通过许多强调时尚事物的特征项来检索。特征提取可以获得更好的精度、姿态和尺度传输。这些卷积滤波器通过神经网络中的多个epoch和最大池化层来提取特征。本研究采用支持向量机进行优化分类,达到了整体的高效率。本文提出的CNN方法与SVM相结合,实现了更好的分类。此外,通过评价过程使分类误差最小化,以获得更好的准确率。最后,与不同的传统方法相比,本研究工作取得了良好的准确性和其他性能指标。基准数据集、当前方法和性能比较都针对每个部分进行了重新组织。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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