结合纹理特征和直方图矩的卵巢囊肿超声图像检索与分类

Abu Sayeed Md. Sohail, M. Rahman, P. Bhattacharya, Srinivasan Krishnamurthy, S. Mudur
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引用次数: 23

摘要

针对单纯性囊肿、子宫内膜异位瘤和畸胎瘤这三种类型的卵巢囊肿,提出了一种基于内容的超声医学图像检索和分类的有效解决方案。我们建议的解决方案包括以下内容:结合直方图矩和基于灰度共生矩阵(GLCM)的统计纹理描述符提取低水平超声图像特征,使用基于Gower相似系数的相似度模型(衡量查询图像与目标图像之间的相关性)进行图像检索,并使用多类支持向量机(SVM)将低水平超声图像特征分类到相应的高级别类别。使用一个正在开发的数据库(目前包含478张卵巢超声图像)对上述方案进行超声医学图像检索和分类的效率进行了评估。在性能方面,在超声图像检索中,我们提出的方案分别在前20和40个检索结果中显示了77%和75%以上的平均精度,平均分类准确率为86.90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Retrieval and classification of ultrasound images of ovarian cysts combining texture features and histogram moments
This paper presents an effective solution for content-based retrieval and classification of ultrasound medical images representing three types of ovarian cysts: Simple Cyst, Endometrioma, and Teratoma. Our proposed solution comprises of the followings: extraction of low level ultrasound image features combining histogram moments with Gray Level Co-Occurrence Matrix (GLCM) based statistical texture descriptors, image retrieval using a similarity model based on Gower's similarity coefficient which measures the relevance between the query image and the target images, and use of multiclass Support Vector Machine (SVM) for classifying the low level ultrasound image features into their corresponding high level categories. Efficiency of the above solution for ultrasound medical image retrieval and classification has been evaluated using an inprogress database, presently consisting of 478 ultrasound ovarian images. Performance-wise, in retrieval of ultrasound images, our proposed solution has demonstrated above 77% and 75% of average precision considering the first 20 and 40 retrieved results respectively, and an average classification accuracy of 86.90%.
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