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Long-Term Learning in Content-Based Image Retrieval

机译:基于内容的图像检索中的长期学习

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摘要

In content-based image retrieval, relevance feedback is an interactive process, which builds a bridge to connect users with the search engine. It leads to much improved retrieval performance by updating the query and the similarity measure according to a user's preference; and recently techniques have matured to some extent. However, most previous relevance feedback approaches exploit short-term learning (intraquery learning) that is dealing with the current feedback session but ignoring historical data from other users, which potentially results in a great loss of useful information. Fortunately, by recording and collecting feedback knowledge from different users over a variety of query sessions, long-term learning (interquery learning) can be implemented to further improve the performance of content-based image retrieval in terms of effectiveness and efficiency. For this reason, long-term learning has an increasingly important role in multimedia information searching. No comprehensive survey of long-term learning has been conducted to date. To this end, the article addresses this omission and offers suggestions for future work.
机译:在基于内容的图像检索中,相关性反馈是一个交互式过程,它搭建了将用户与搜索引擎联系起来的桥梁。通过根据用户的偏好更新查询和相似性度量,可以大大提高检索性能。并且最近的技术已经在某种程度上成熟了。但是,大多数以前的相关性反馈方法都利用短期学习(查询内学习)来处理当前反馈会话,但忽略了其他用户的历史数据,这可能会导致有用信息的大量丢失。幸运的是,通过记录和收集来自不同用户在各种查询会话中的反馈知识,可以实现长期学习(查询间学习),以进一步提高基于内容的图像检索在有效性和效率方面的性能。因此,长期学习在多媒体信息搜索中具有越来越重要的作用。迄今为止,尚未进行长期学习的全面调查。为此,本文解决了这一遗漏,并为以后的工作提供了建议。

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