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首页> 外文期刊>International journal of digital library systems >Mammogram Retrieval:Image Selection Strategy of Relevance Feedback for Locating Similar Lesions
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Mammogram Retrieval:Image Selection Strategy of Relevance Feedback for Locating Similar Lesions

机译:乳房X线照片检索:相关反馈定位相似病变的图像选择策略

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摘要

Content-based image retrieval (CBIR) has been proposed by the medical community for inclusion in picture archiving and communication systems (PACS). In CBIR, relevance feedback is developed for bridging the semantic gap and improving the effectiveness of image retrieval systems. With relevance feedback, CBIR systems can return refined search results using a learning algorithm and selection strategy. In this study, as the retrieving process proceeds further, the proposed learning algorithm can reduce the influence of the original query point and increase the significance of the centroid of the clusters comprising the features of those relevant images identified in the most recent round of search. The proposed selection strategy is used to find a good starting point and select a set of images al each round to show that search result and ask for the user's feedback. In addition, a benchmark is proposed to measure the learning ability to explain the retrieval performance as relevance feedback is incorporated in CBIR systems. The performance evaluation shows that the average precision rate of the proposed scheme was ft. 98 and the learning ability reach to 7.17 through the five rounds of relevance feedback.
机译:医学界已提出基于内容的图像检索(CBIR),以将其包括在图片存档和通信系统(PACS)中。在CBIR中,开发了相关性反馈来弥合语义鸿沟并提高图像检索系统的效率。有了相关性反馈,CBIR系统可以使用学习算法和选择策略返回精确的搜索结果。在这项研究中,随着检索过程的进一步进行,所提出的学习算法可以减少原始查询点的影响,并增加包含最近一轮搜索中识别出的相关图像特征的聚类质心的重要性。所提出的选择策略用于找到良好的起点并每轮选择一组图像以显示该搜索结果并要求用户反馈。此外,由于在CBIR系统中包含了相关反馈,因此提出了一个基准来衡量学习能力以解释检索性能。性能评估表明,该方案的平均准确率为98英尺,通过五轮相关反馈,学习能力达到7.17。

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