An Efficient Search Algorithm for Content-Based Image Retrieval with User Feedback

A. Leung, P. Auer
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引用次数: 9

Abstract

We propose a probabilistic model for the relevance feedback of users looking for target images. This model takes into account user errors and user uncertainty about distinguishing similarly relevant images. Based on this model, we have developed an algorithm, which selects images to be presented to the user for further relevance feedback until a satisfactory image is found. In each query session, the algorithm maintains weights on the images in the database which reflect the assumed relevance of the images. Relevance feedback is used to modify these weights. As a second ingredient, the algorithm uses a minimax principle to select images for presentation to the user: any response of the user will provide significant information about his query, such that relatively few feedback rounds are sufficient to find a satisfactory image. We have implemented this algorithm and have conducted experiments on both simulated data and real data which show promising results.
一种基于用户反馈的基于内容的图像检索算法
我们提出了一个概率模型,用于用户寻找目标图像的相关反馈。该模型考虑了用户在区分相似相关图像时的错误和不确定性。基于该模型,我们开发了一种算法,该算法选择图像呈现给用户进行进一步的相关性反馈,直到找到满意的图像。在每个查询会话中,算法维护数据库中图像的权重,这些权重反映了图像的假设相关性。相关反馈用于修改这些权重。作为第二个要素,该算法使用极小极大原则来选择呈现给用户的图像:用户的任何响应都将提供有关其查询的重要信息,因此相对较少的反馈轮足以找到令人满意的图像。我们对该算法进行了实现,并在模拟数据和实际数据上进行了实验,取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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