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Content-Based Retrieval and Classification of Ultrasound Medical Images of Ovarian Cysts

机译:基于内容的卵巢囊肿超声医学图像的检索和分类

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This paper presents a combined method of content-based retrieval and classification of ultrasound medical images representing three types of ovarian cysts: Simple Cyst, Endometrioma, and Teratoma. Combination of histogram moments and Gray Level Co-Occurrence Matrix (GLCM) based statistical texture descriptors has been proposed as the features for retrieving and classifying ultrasound images. To retrieve images, relevance between the query image and the target images has been measured using a similarity model based on Gower's similarity coefficient. Image classification has been performed applying Fuzzy k-Nearest Neighbour (k-NN) classification technique. A database of 478 ultrasound ovarian images has been used to verify the retrieval and classification accuracy of the proposed system. In retrieving ultrasound images, the proposed method has demonstrated above 79% and 75% of average precision considering the first 20 and 40 retrieved images respectively. Further, 88.12% of average classification accuracy has been achieved in classifying ultrasound images using the proposed method.
机译:本文提出一种基于内容的检索和代表三种类型的卵巢囊肿的超声医学图像的分类的组合方法:单纯囊肿,子宫内膜异位囊肿,畸胎瘤和。直方图矩和灰度共生矩阵(GLCM)基于统计的纹理描述符的组合已被提议作为特征检索和超声图像进行分类。要检索的图像,所述查询图像和目标图像之间的相关性已经使用基于高尔的相似系数相似性模型进行了测量。图像分类已执行应用模糊k近邻(K-NN)分类技术。 478卵巢超声图像的数据库已被用来验证了该系统的检索和分类精度。在检索超声图像,所提出的方法已经证明79%和平均精度75%分别考虑第一20个40检索到的图像的上方。此外,平均分类精度的88.12%已使用所提出的方法的超声波图像进行分类来实现。

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