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Selection of optimal texture descriptors for retrieving ultrasound medical images

机译:检索超声医学图像的最佳纹理描述符的选择

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Although feature selection has been proven to be very effective in machine learning and pattern classification applications, it has not been widely practiced in the area of image annotation and retrieval. This paper presents a method of selecting a near optimal to optimal subset of statistical texture descriptors in efficient representation and retrieval of ultrasound medical images. An objective function combining the concept of between-class distance and within-class divergence among the training dataset has been proposed as the evaluation criteria of optimality. Searching for the selection of optimal subset of image descriptors has been performed using Multi-Objective Genetic Algorithm (MOGA). The proposed feature selection based approach of image annotation and retrieval has been tested using a database of 679 ultrasound ovarian images and satisfactory retrieval performance has been achieved. Besides, performance of ultrasound medical image retrieval with and without applying feature selection based image annotation technique has also been compared.
机译:尽管特征选择已被证明在机器学习和模式分类应用中非常有效,但尚未在图像注释和检索领域广泛应用。本文提出了一种在超声医学图像的有效表示和检索中选择接近最优的统计纹理描述符子集的方法。提出了一种目标函数,该函数结合了训练数据集之间的类间距离和类内差异的概念,作为最优性的评估标准。已经使用多目标遗传算法(MOGA)进行了图像描述符最佳子集的选择搜索。提出的基于特征选择的图像标注和检索方法已经使用679个超声卵巢图像数据库进行了测试,并且获得了令人满意的检索性能。此外,还比较了使用和不使用基于特征选择的图像标注技术的超声医学图像检索的性能。

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