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A Framework for Medical Image Retrieval Using Machine Learning and Statistical Similarity Matching Techniques With Relevance Feedback

机译:使用机器学习和具有相关性反馈的统计相似度匹配技术的医学图像检索框架

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摘要

A content-based image retrieval (CBIR) framework for diverse collection of medical images of different imaging modalities, anatomic regions with different orientations and biological systems is proposed. Organization of images in such a database (DB) is well defined with predefined semantic categories; hence, it can be useful for category-specific searching. The proposed framework consists of machine learning methods for image prefiltering, similarity matching using statistical distance measures, and a relevance feedback (RF) scheme. To narrow down the semantic gap and increase the retrieval efficiency, we investigate both supervised and unsupervised learning techniques to associate low-level global image features (e.g., color, texture, and edge) in the projected PCA-based eigenspace with their high-level semantic and visual categories. Specially, we explore the use of a probabilistic multiclass support vector machine (SVM) and fuzzy c-mean (FCM) clustering for categorization and prefiltering of images to reduce the search space. A category-specific statistical similarity matching is proposed in a finer level on the prefiltered images. To incorporate a better perception subjectivity, an RF mechanism is also added to update the query parameters dynamically and adjust the proposed matching functions. Experiments are based on a ground-truth DB consisting of 5000 diverse medical images of 20 predefined categories. Analysis of results based on cross-validation (CV) accuracy and precision-recall for image categorization and retrieval is reported. It demonstrates the improvement, effectiveness, and efficiency achieved by the proposed framework
机译:提出了一种基于内容的图像检索(CBIR)框架,用于不同图像模式,具有不同方向的解剖区域和生物系统的医学图像的各种收集。使用预定义的语义类别可以很好地定义此类数据库(DB)中的图像组织;因此,它对于特定于类别的搜索很有用。提出的框架包括用于图像预过滤的机器学习方法,使用统计距离度量的相似度匹配以及相关性反馈(RF)方案。为了缩小语义鸿沟并提高检索效率,我们研究了有监督和无监督的学习技术,以将基于PCA的投影特征空间中的低级全局图像特征(例如颜色,纹理和边缘)与高水平相关联语义和视觉类别。特别地,我们探索使用概率多类支持向量机(SVM)和模糊c均值(FCM)聚类对图像进行分类和预过滤以减少搜索空间。在预过滤图像上以更精细的级别提出了特定于类别的统计相似性匹配。为了结合更好的感知主观性,还添加了RF机制来动态更新查询参数并调整建议的匹配功能。实验基于真实的数据库,该数据库包含20种预定义类别的5000张不同医学图像。报告了基于交叉验证(CV)准确性和精度调用的结果分析,以进行图像分类和检索。它证明了所提议框架的改进,有效性和效率

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