结合YOLOv5和Grabcut算法的服装时尚色彩分析

Feng Liu, Zhaoqi Liu, Weiguang Liu, Hongsheng Zhao
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引用次数: 0

摘要

服装流行色彩的分析和预测对于服装行业的生产和销售活动具有十分重要的意义。在服装图像的时尚色彩分析领域,现有的图像算法存在复杂背景下分割效果差、数据实时性差等问题。本文将YOLOv5算法应用到服装检测中,利用直方图均衡化对服装图片图像进行增强,利用KMeans聚类算法得到服装的近似前景区域,利用GrabCut算法将图像与处理后的图片进行分割得到服装的最终前景区域,然后利用KMeans聚类算法得到服装的主色调。从而分析颜色之间的图案。视频监控场景中服装时尚色彩的研究比现有的研究方法具有更高的实时数据量、更大的数据容量和更快的分析速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining the YOLOv5 and Grabcut Algorithms for Fashion Color Analysis of Clothing
The analysis and prediction of apparel fashion colors are very important for the production and sales activities of the apparel industry. In the field of fashion color analysis of apparel images, existing image algorithms have problems such as poor segmentation effects in complex backgrounds and poor data real-time. In this paper, the YOLOv5 algorithm is applied to garment detection, the histogram equalization is used to enhance the image of garment pictures, the KMeans clustering algorithm is used to get the approximate foreground area of the garment, the GrabCut algorithm is used to segment the image with the processed pictures to get the final foreground color area of the garment, and then the KMeans clustering algorithm is used to get the main color of the garment. thus analyzing the pattern between colors. The study of fashionable colors of clothing in video surveillance scenes has higher real-time data volumes, larger data capacities, and faster analysis speeds than the current research methods.
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