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A novel ACM for segmentation of medical image with intensity inhomogeneity

机译:一种新型ACM,用于分割医学图像,强度不均匀性

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This paper presents a scheme of improvement on the Li's model in terms of intensity inhomogeneous images. By introducing local entropy to Li's model, our method is able to segment medical images with intensity inhomogeneity and estimate the bias field simultaneously. The level set energy function is redefined as a weighted energy integral, where the weight is local entropy deriving from a grey level distribution of image. The total energy functional is then incorporated into a level set formulation. Experimental results on test images show that our approach outperforms the existing locally statistical active contour model (LSACM) and Li's model in terms of accuracy and efficiency with less central processing unit (CPU) time.
机译:本文介绍了在强度不均匀图像方面改善李模型的方案。通过向Li的模型引入本地熵,我们的方法能够将具有强度不均匀性的医学图像分段,并同时估计偏置场。级别设置能量函数被重新定义为加权能量积分,其中重量是从图像的灰度分布导出的局部熵。然后将总能量函数掺入水平集合中。测试图像的实验结果表明,我们的方法在具有较少中央处理单元(CPU)时间的准确性和效率方面优于现有的本地统计主动轮廓模型(LSACM)和LI的模型。

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