支持向量机主动学习图像检索

Simon Tong, E. Chang
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引用次数: 1536

摘要

在设计图像数据库时,相关反馈通常是一个关键的组成部分。对于这些数据库,很难直接显式地指定查询。相关性反馈通过询问用户所建议的某些图像是否相关,交互式地确定用户想要的输出或查询概念。相关性反馈算法要想有效,必须准确、快速地把握用户的查询概念,同时只要求用户标记少量的图像。我们建议使用支持向量机主动学习算法来进行有效的图像检索相关反馈。该算法选择信息量最大的图像来查询用户,并快速学习一个边界,将满足用户查询概念的图像与数据集的其余部分分开。实验结果表明,仅经过3 ~ 4轮的相关性反馈,该算法的搜索精度就明显高于传统的查询优化方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support vector machine active learning for image retrieval
Relevance feedback is often a critical component when designing image databases. With these databases it is difficult to specify queries directly and explicitly. Relevance feedback interactively determinines a user's desired output or query concept by asking the user whether certain proposed images are relevant or not. For a relevance feedback algorithm to be effective, it must grasp a user's query concept accurately and quickly, while also only asking the user to label a small number of images. We propose the use of a support vector machine active learning algorithm for conducting effective relevance feedback for image retrieval. The algorithm selects the most informative images to query a user and quickly learns a boundary that separates the images that satisfy the user's query concept from the rest of the dataset. Experimental results show that our algorithm achieves significantly higher search accuracy than traditional query refinement schemes after just three to four rounds of relevance feedback.
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