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Highly-efficient technique for automatic segmentation of X-ray bone images based on fuzzy logic and an edge detection technique

机译:基于模糊逻辑的X射线骨图像自动分割技术的高效技术及边缘检测技术

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摘要

Development of medical image segmentation techniques has become one of the most important challenges in many applications that employ computers-based medical image analysis techniques. However, most of current-existing medical image segmentation techniques still have poor efficiency and complexity in calculations. A new technique for X-ray bone image segmentation has been presented in this paper. The proposed technique is designed to generate a highly-efficient quality of bone extraction from X-ray bone image at low calculation burdens. The proposed approach begins with obtaining the inverse of the original X-ray bone image then applying bounded-product operator and fuzzy controller to control the contrast of the inverse image. At the same time, an adaptive thresholding of the gradient magnitude of the original X-ray bone image is achieved to detect the edges of the bone regions. Accordingly, the bone edges are integrated with the contrasted image to give the bone segmented image. To ensure the efficient quality of the proposed algorithm, more than sixty-one of X-ray bone images were tested using much vision and statistical investigations. Then, evaluations employed several measures such as Dice similarity coefficient index, Confusion Matrix, Accuracy, Precision, Sensitivity, Specificity, and processing speed. Furthermore, results obtained using the proposed were compared to those of conventional image segmentation techniques (such as Watershed segmentation, Otsu-thresholding, K-means, and fuzzy C-means). Comparison results demonstrated the superiority of the proposed technique over other conventional techniques in both of quality and processing speed. All obtained results were obtained using MATLAB R20014a over Windows XP with processing speed 2?GHz. The high efficiency and processing speed of the proposed technique makes it such a promising solution to be implemented in many real applications.
机译:医学图像分割技术的发展已成为采用基于计算机的医学图像分析技术的许多应用中最重要的挑战之一。然而,大多数当前现有的医学图像分割技术仍然在计算中具有差的效率和复杂性。本文介绍了一种新的X射线骨图像分割技术。该提出的技术旨在在低计算负担下从X射线骨图像产生高效的骨提取质量。所提出的方法开始于获得原始X射线骨图像的逆逆应用有界产品操作员和模糊控制器来控制逆图像的对比度。同时,实现了原始X射线图像的梯度幅度的自适应阈值,以检测骨区的边缘。因此,骨骼边缘与对比图像集成,以给予骨分段图像。为了确保所提出的算法的高效质量,使用大量的视觉和统计调查测试了超过六十一点的X射线图像。然后,评估采用若干措施,例如骰子相似系数指数,混淆矩阵,精度,精度,灵敏度,特异性和处理速度。此外,将使用该提出的结果与常规图像分割技术(例如流域分割,OTSU阈值,K均值和模糊C-ins)进行比较。比较结果表明,在质量和处理速度的其他传统技术中,所提出的技术的优越性。所有获得的结果都是使用MATLAB R20014A获得的,在Windows XP上使用加工速度2?GHz。所提出的技术的高效率和处理速度使得它在许多真实应用中实现了这样一个有希望的解决方案。

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