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Enhanced and Effective Computerized Classification of X-Ray Images

机译:增强和有效的计算机化X射线图像分类

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According to the World health organization (WHO) accidents became very common. Due to the increase in accidents automating of fracture detections became very essential. To detect the fracture it is necessary to classify the X-ray image first. This paper proposed an effective methodology for the classification of x-ray images to classify the automated explanation to provide efficient and effective results to the physicians and radiologists for making a decision. An attempt was made and a framework presented in this paper, which involves images being pre-processed using M3 filter for denoising, segmentation by K-means clustering, preceded by Statistical feature extraction. Classification of X-ray images are categorized into chest, spine, foot, palm, skull, the head is carried out by comparing the K-Nearest Neighbour (KNN) algorithm, Support Vector Machine(SVM) and Back Propagation Neural Network(BPNN). Overall 88% of accuracy in the analysis of X-ray images is acquired in BPNN Compared to other techniques.
机译:根据世界卫生组织(WHO)的说法,事故变得非常普遍。由于事故的增加,裂缝检测的自动化变得非常重要。为了检测骨折,必须首先对X射线图像进行分类。本文提出了一种有效的方法来对X射线图像进行分类,以对自动解释进行分类,从而为医师和放射科医生提供有效而有效的结果,以便做出决定。本文尝试并提出了一个框架,该框架涉及使用M3滤波器对图像进行预处理以进行降噪,通过K均值聚类进行分割,然后进行统计特征提取。 X射线图像的分类分为胸部,脊柱,足,掌,颅骨,通过比较K最近邻算法(KNN),支持向量机(SVM)和反向传播神经网络(BPNN)来进行头部的分类。 。与其他技术相比,BPNN获得了X射线图像分析总体上88%的准确性。

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