Two-Stage Method for Clothing Feature Detection

Xinwei Lyu, Xinjia Li, Yuexin Zhang, Wenlian Lu
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Abstract

The rapid expansion of e-commerce, particularly in the clothing sector, has led to a significant demand for an effective clothing industry. This study presents a novel two-stage image recognition method. Our approach distinctively combines human keypoint detection, object detection, and classification methods into a two-stage structure. Initially, we utilize open-source libraries, namely OpenPose and Dlib, for accurate human keypoint detection, followed by a custom cropping logic for extracting body part boxes. In the second stage, we employ a blend of Harris Corner, Canny Edge, and skin pixel detection integrated with VGG16 and support vector machine (SVM) models. This configuration allows the bounding boxes to identify ten unique attributes, encompassing facial features and detailed aspects of clothing. Conclusively, the experiment yielded an overall recognition accuracy of 81.4% for tops and 85.72% for bottoms, highlighting the efficacy of the applied methodologies in garment categorization.
服装特征检测的两阶段方法
电子商务的快速发展,尤其是服装行业的快速发展,对有效的服装行业提出了巨大的需求。本研究提出了一种新颖的两阶段图像识别方法。我们的方法独特地将人体关键点检测、物体检测和分类方法结合到一个两阶段结构中。首先,我们利用开源库(即 OpenPose 和 Dlib)进行精确的人体关键点检测,然后利用自定义裁剪逻辑提取人体部位框。在第二阶段,我们将哈里斯角、坎尼边缘和皮肤像素检测与 VGG16 和支持向量机 (SVM) 模型相结合。这种配置使边界框能够识别十种独特的属性,包括面部特征和服装的细节方面。实验结果表明,上衣和下装的整体识别准确率分别为 81.4% 和 85.72%,突出表明了所应用方法在服装分类方面的功效。
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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