Multi-step breast mass image segmentation method based on MFC-PCNN

Ruifeng Huang, Jing Lian, Caixia Zhang
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引用次数: 1

Abstract

In order to solve the problem that pulse coupled neural network (PCNN) has low image segmentation accuracy and high computational complexity for image segmentation aspect, this paper proposes a multi-step medical image processing method that combines saliency detection and a modified PCNN model. First, an improved pulse coupled neural network model (MFC-MSPCNN) is proposed based on the FC-MSPCNN model. This method simplifies the related setting parameters, sets a new connection matrix, and improves the attenuation factor α according to the MFC-MSPCNN characteristics. The achieved steps of the method firstly use a GBVS algorithm based on the saliency detection mechanism to obtain the saliency region map of the mass, and then use it as an external input of the MFC-MSPCNN model to accurately segment the breast mass region. The experiments show that our proposed method can accurately segment breast masses and has low computational complexity than other prevalent methods.
基于MFC-PCNN的多步乳腺肿块图像分割方法
针对脉冲耦合神经网络(pulse coupled neural network, PCNN)在图像分割方面精度低、计算量大的问题,提出了一种将显著性检测与改进的PCNN模型相结合的多步医学图像处理方法。首先,在FC-MSPCNN模型的基础上,提出了改进的脉冲耦合神经网络模型(MFC-MSPCNN)。该方法根据MFC-MSPCNN的特性,简化了相关设置参数,设置了新的连接矩阵,提高了衰减因子α。该方法的实现步骤首先使用基于显著性检测机制的GBVS算法获得肿块的显著性区域图,然后将其作为MFC-MSPCNN模型的外部输入,对乳腺肿块区域进行精确分割。实验结果表明,该方法能够准确地分割乳腺肿块,且计算复杂度较其他常用方法低。
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