Detection of Kidney Cysts of Kidney Ultrasound Image using Hybrid Method: KNN, GLCM, and ANN Backpropagation

Mardison, Yuhandri
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引用次数: 1

Abstract

This research is aim to detect kidney cysts from human kidney Ultrasound (USG) 2D Images. This research uses data from Hospital patients as many as 25 Ultrasound images of the human kidney in the format image .jpg. This research uses the K-Nearest Neighbor (KNN) method for image classification of ultrasound images then using Gray Level Co-Occurrence Matrix (GLCM) method for image extraction to detect cyst and non-cyst regions from the result of classification after that using Artificial Neural Network (ANN) method type Backpropagation for image detection to find cysts from human kidney Ultrasound (USG) 2D Image from the result of image extraction. The result of this research is producing the algorithm to implement the method and the tool software application to detect kidney cysts from ultrasound 2D images. The accuracy of this tool is 84% which can detect with accurate 21 kidney cysts from 25 kidney ultrasound 2D images that validate of a Urology Specialist Doctor.
利用KNN、GLCM和ANN反向传播混合方法检测肾脏超声图像中的肾囊肿
本研究旨在从人体肾脏超声(USG)二维图像中检测肾囊肿。本研究使用来自医院患者的数据,多达25张人体肾脏的超声波图像,格式为image .jpg。本研究使用k -最近邻(KNN)方法对超声图像进行图像分类,然后使用灰度共生矩阵(GLCM)方法进行图像提取,从分类结果中检测囊肿和非囊肿区域,再使用人工神经网络(ANN)方法类型反向传播进行图像检测,从图像提取结果中发现人体肾脏超声(USG)二维图像中的囊肿。这项研究的结果是产生实现该方法的算法和工具软件应用程序,从超声二维图像中检测肾囊肿。该工具的准确率为84%,可以从25张肾脏超声2D图像中准确检测出21个肾囊肿,验证了泌尿科专科医生的诊断。
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