A adaptive segmentation algorithm of ultrasonic image based on simplified PCNN

Yijie Liu, Yanzhu Zhang, Jingjing Huang
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Abstract

The imaging characteristics of the ultrasound image, the segmentation research progress slowly. In this paper, a new segmentation algorithm based on PCNN to the ultrasonic image was provided. Aim at the problem which is hard to determine the parameters for the PCNN in the past segmentation algorithm, so the new image segmentation method was proposed that banded automatic optimization ability of PSO and used the improved maximum entropy function as the fitness function. Through the simulation experiments show that, the segmentation result diagram of this article represents a good robustness. When it is used in the segmentation of the primary liver cancer ultrasound ima ge, it can clearly separate the entity giant lesion area of the liver membrane area. It provides a reliable basis of the diagnosed type of the patient for the doctor and improves the diagnosis accuracy of the doctor.
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基于简化PCNN的超声图像自适应分割算法
由于超声图像的成像特点,对其分割的研究进展缓慢。提出了一种基于PCNN的超声图像分割算法。针对以往PCNN分割算法中参数难以确定的问题,提出了利用PSO的带状自动优化能力,采用改进的最大熵函数作为适应度函数的图像分割新方法。通过仿真实验表明,本文的分割结果图具有较好的鲁棒性。用于原发性肝癌超声图像分割时,能清晰地分离出肝膜区域的实体巨大病变区域。为医生提供了患者诊断类型的可靠依据,提高了医生的诊断准确率。
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