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Local Features and Takagi-Sugeno Fuzzy Logic based Medical Image Segmentation

机译:基于局部特征和基于Takagi-Sugeno模糊逻辑的医学图像分割

摘要

This paper presents an improved region scalable fitting model that uses fuzzy weighted local features and active contour model for medical image segmentation. Local variance is used with local entropy to extract the regional information from the image which is then processed with the Takagi-Sugeno fuzzy system to compute weights. The use of regional descriptors enables this model to segment the inhomogeneous intensity images. The proposed objective function is minimized by using level set function. Performance evaluation of the proposed and existing model is achieved with the help of a Probability Rand Index, Global Consistency Error, the number of iterations and computation time taken. Extensive experiments on a series of real X-ray and MRI medical images shows the proposed technique offers better segmentation accuracy in lesser number of iterations and computation time.
机译:本文提出了一种改进的区域可扩展拟合模型,该模型使用模糊加权局部特征和主动轮廓模型进行医学图像分割。局部方差与局部熵一起用于从图像中提取区域信息,然后使用Takagi-Sugeno模糊系统对其进行处理以计算权重。区域描述符的使用使该模型能够分割不均匀的强度图像。通过使用水平集函数,可以将建议的目标函数最小化。借助兰特概率指数,全局一致性误差,迭代次数和计算时间,可以对提出的模型和现有模型进行性能评估。在一系列实际的X射线和MRI医学图像上进行的大量实验表明,所提出的技术以较少的迭代次数和计算时间提供了更好的分割精度。

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