基于特征提取技术的图像推荐系统

Zuhal Kurt, Kemal Özkan
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引用次数: 5

摘要

推荐系统在使用其他用户数据的同时,向用户提供各种产品和服务的推荐。它们的成功对于用户和使用这些系统的电子商务网站来说都是必不可少的。提供准确可靠的建议可以提高用户满意度,从而销售更多的产品和服务。近年来,基于图像的推荐系统受到越来越多的关注。这些系统基于用户上传的图像。他们首先根据用户上传到系统的图片来确定最相似的用户。然后,他们根据邻居喜欢的图像将最有可能的图像返回给用户。在基于图像的推荐系统中,最具挑战性的问题是根据图像的视觉内容将图像与最相似的视觉单词或类进行匹配。为了解决这一问题,我们设计了一个基于词袋模型的系统BoW模型是计算机视觉领域的一种有效模型,我们使用SURF、SIFT和LBP描述符对系统进行特征提取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An image-based recommender system based on feature extraction techniques
Recommender systems provide recommendations about various products and services to their users while using other users data. Their success is imperative for both users and the e-commerce sites utilizing such systems. Providing accurate and dependable recommendations increases user satisfaction that results selling more products and services. Image-based recommender systems are receiving increasing attention in the recent years. These systems are based on images uploaded by users. They first determine the most similar users based on the images they upload to the system. They then return the most likely image to the users based on the images liked by the neighbors. The most challenging problem in image-based recommneder systems is to match an image with the most similar visual words or classes based on the image's visual content. We design a system which is using Bag of words model, to solving this problem.1 BoW model is an effective model in computer vision field, and we use SURF, SIFT and LBP descriptors for extracting features in our system.
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