Research on the application of CNN algorithm based on chaotic recursive diagonal model in medical image processing

Defang Cheng, Zhenxia Wang, Jianxia Li
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Abstract

Abstract In this paper, the image processing capability of the CNN algorithm under the chaotic recursive diagonal model is explored from two aspects of medical image fusion and compression. By analyzing the structure of the chaotic recursive diagonal model, it is possible to combine it with a neural network. A convolutional neural network is used to automatically extract the focusing features of an image and output the probability of a pixel focusing. Combining the convolutional layer to extract image features with the activation function to nonlinearly map the feature map to achieve the effect of image fusion. Focusing on the exploration of the CNN algorithm for image fusion in image compression application processes. The results show that in the image fusion experiments, the CNN algorithm for image fusion data MI mean value is 6.1051, variance is 0.4418. QY mean value is 0.9859. The variance value is 0.0014. Compared to other algorithms, CNN in the image fusion effect has the effect of better distinguishing the edge details and making the appropriate decision. The CNN algorithm of the compression time is shorter. The time used in the compression of the X-chest image is 2.75s, which is 0.42 less than other algorithms. This study provides a new research perspective for medical image processing and is beneficial to improving the efficiency of medical image processing.
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基于混沌递归对角线模型的 CNN 算法在医学图像处理中的应用研究
摘要本文从医学图像融合和压缩两个方面探讨了混沌递归对角模型下CNN算法的图像处理能力。通过分析混沌递归对角模型的结构,可以将其与神经网络相结合。利用卷积神经网络自动提取图像的聚焦特征,并输出像素聚焦的概率。结合卷积层提取图像特征和激活函数对特征映射进行非线性映射,达到图像融合的效果。重点探索了CNN算法在图像压缩中的图像融合应用过程。结果表明,在图像融合实验中,CNN算法对图像融合数据的MI均值为6.1051,方差为0.4418。QY平均值为0.9859。方差值为0.0014。与其他算法相比,CNN在图像融合效果上具有更好地识别边缘细节并做出适当决策的效果。CNN算法的压缩时间更短。x胸图像的压缩时间为2.75s,比其他算法压缩时间缩短0.42 s。本研究为医学图像处理提供了新的研究视角,有利于提高医学图像处理效率。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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