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Online learning of relevance feedback from expert readers for mammogram retrieval

机译:在线学习专家阅读器的相关反馈,以获取乳房X线照片

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In content-based image retrieval (CBIR) relevance feedback schemes have been studied as a means to boost the retrieval performance in recent years. Despite the efforts in development of efficient algorithms for retrieving desired images from image databases, there often remains a gap between low-level image features and high-level semantic understanding in CBIR systems. In this paper, we investigate a technique based on online learning by relevance feedback for retrieval of mammogram images that contain perceptually similar lesions with clustered microcalcifications. Our approach applies support vector machine (SVM) regression for supervised learning and employs the concept of incremental learning to incorporate relevance feedback online. The proposed approach is demonstrated using a database of 200 mammogram images with clustered microcalcifications scored by experienced radiologists.
机译:在基于内容的图像检索(CBIR)中,近年来已经研究了相关性反馈方案,作为提高检索性能的一种手段。尽管开发了用于从图像数据库检索所需图像的有效算法的努力,但是在CBIR系统中,低级图像特征和高级语义理解之间通常仍然存在差距。在本文中,我们研究了一种基于在线学习的技术,该技术通过相关性反馈来检索乳房X射线照片,这些照片中包含与肉眼可见钙化相似的病灶。我们的方法将支持向量机(SVM)回归用于监督学习,并采用增量学习的概念来在线整合相关性反馈。使用200张乳房X射线照片图像的数据库演示了该方法,该数据库具有由经验丰富的放射科医生评分的成簇的微钙化层。

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