服装推荐系统

Nikita Ramesh, Teng-Sheng Moh
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引用次数: 8

摘要

美国的在线服装零售市场规模约为720亿美元。零售网站上的推荐系统产生了大量的收入。因此,改进推荐系统可以增加他们的收入。传统的着装建议是由词汇法组成的。然而,在过去的几年里,基于视觉的推荐越来越受欢迎。这涉及到使用不同的图像处理技术处理大量图像。为了处理如此大量的图像,深度神经网络被广泛使用。在快速图形处理单元的帮助下,这些网络在很短的时间内提供了非常准确的结果。然而,仍然有一些方法可以改进对服装的建议。提出了一种基于事件的基于目标检测的服装推荐系统。我们训练一个模型来识别用户可能参加的9个事件/场景:白色婚礼、印度婚礼、会议、葬礼、红地毯、泳池派对、生日、毕业和锻炼。我们训练另一个模型从活动中穿的53种衣服中检测衣服。目标检测的mAP值为84.01。将检测到的衣服的最近邻居推荐给用户。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Outfit Recommender System
The online apparel retail market size in the United States is worth about seventy-two billion US dollars. Recommender systems on retail websites generate a lot of this revenue. Thus, improving recommender systems can increase their revenue. Traditional recommendations for clothes consisted of lexical methods. However, visual-based recommendations have gained popularity over the past few years. This involves processing a multitude of images using different image processing techniques. In order to handle such a vast quantity of images, deep neural networks have been used extensively. With the help of fast Graphics Processing Units, these networks provide results which are extremely accurate, within a small amount of time. However, there are still ways in which recommendations for clothes can be improved. We propose an event-based clothing recommender system which uses object detection. We train a model to identify nine events/scenarios that a user might attend: White Wedding, Indian Wedding, Conference, Funeral, Red Carpet, Pool Party, Birthday, Graduation and Workout. We train another model to detect clothes out of fifty-three categories of clothes worn at the event. Object detection gives a mAP of 84.01. Nearest neighbors of the clothes detected are recommended to the user.
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