穿得像明星:从视频中检索时尚产品

Noa García, George Vogiatzis
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引用次数: 21

摘要

本工作提出了一个从视频内容中检索服装和时尚产品的系统。虽然电影和电视是时尚品牌宣传其产品的完美展示平台,但观众并不总是知道在哪里可以买到他们在屏幕上看到的最新流行趋势。在此,提出了一个打破视频中展示的时尚产品与用户之间差距的框架。通过将索引数据库中的服装项目和视频帧关联起来,利用时间聚合和快速索引技术进行帧检索,可以简单、无干扰地从视频中找到时尚产品。在这里进行的大规模数据集实验表明,通过使用所提出的框架,相对于线性搜索,内存需求可以减少42.5倍,而准确率保持在90%左右。
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Dress Like a Star: Retrieving Fashion Products from Videos
This work proposes a system for retrieving clothing and fashion products from video content. Although films and television are the perfect showcase for fashion brands to promote their products, spectators are not always aware of where to buy the latest trends they see on screen. Here, a framework for breaking the gap between fashion products shown on videos and users is presented. By relating clothing items and video frames in an indexed database and performing frame retrieval with temporal aggregation and fast indexing techniques, we can find fashion products from videos in a simple and non-intrusive way. Experiments in a large-scale dataset conducted here show that, by using the proposed framework, memory requirements can be reduced by 42.5X with respect to linear search, whereas accuracy is maintained at around 90%.
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