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Content-Based Image Retrieval Based on Relevance Feedback and Reinforcement Learning for Medical Images

机译:基于相关反馈和增强学习的医学图像基于内容的图像检索

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摘要

To enable a relevance feedback paradigm to evolve itself by users' feedback, a reinforcement learning method is proposed. The feature space of the medical images is partitioned into positive and negative hypercubes by the system. Each hypercube constitutes an individual in a genetic algorithm infrastructure. The rules take recombination and mutation operators to make new rules for better exploring the feature space. The effectiveness of the rules is checked by a scoring method by which the ineffective rules will be omitted gradually and the effective ones survive. Our experiments on a set of 10,004 images from the IRMA database show that the proposed approach can better describe the semantic content of images for image retrieval with respect to other existing approaches in the literature.
机译:为了使相关性反馈范式能够根据用户的反馈自身发展,提出了一种强化学习方法。系统将医学图像的特征空间划分为正超立方体和负超立方体。每个超立方体都构成遗传算法基础结构中的一个个体。该规则采用重组和变异运算符来创建新规则,以更好地探索特征空间。规则的有效性通过一种计分方法检查,通过该方法,无效的规则将逐渐被忽略,而有效的规则则可以生存。我们对来自IRMA数据库的10004张图像进行的实验表明,相对于文献中的其他现有方法,该方法可以更好地描述图像的语义内容,以进行图像检索。

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