1. 苏州大学电子信息学院,江苏,苏州,215021
2. 曲阜师范大学计算机科学学院,山东,日照,276826
3. 苏州大学电子信息学院江苏苏州,215021
4. 曲阜师范大学计算机科学学院山东日照,276826
纸质出版:2006
移动端阅览
孟静, 王加俊, 黄贤武. 基于耦合梯度神经网络的光学层析图像重建[J]. 电子学报, 2006,34(5):892-896.
MENG Jing, WANG Jia-jun, HUANG Xian-wu. Optical Tomography Reconstruction Based on Coupled Gradient Neural Network[J]. Acta Electronica Sinica, 2006, 34(5): 892-896.
为克服光学层析图像重建的病态性
通常在重建过程中加入先验信息.本文采用含有二值线过程的Gibbs分布作为图像的先验模型
该模型具有保留清晰边缘的全局平滑特性.由于重建目标函数是连续变量和二值离散变量的混合体
常规的优化算法无法实现.为此
提出了一种基于耦合梯度神经网络的优化方法.优化过程中
能量函数关于光学参数的梯度计算是关键
本文提出一种基于梯度树的梯度求解方法.对吸收系数和散射系数的重建结果表明:该方法可高效地重建光学层析图像;线过程的引入可以改善重建的病态特性
提高图像的重建质量.
In order to fix the problem of ill-posedness
some a priori information should be incorporated in the process of optical tomography reconstruction.In this paper
a Gibbs distribution with binary line process is introduced as a prior image model
which can result in a global smoothness with sharp edges.Because of the coexistence of the binary and continuous variables in the objective function
traditional optimization algorithms are not valid.Therefore
a coupled gradient neural network is proposed.In the process of optimization
the gradient computation of the energy function with respect to optical parameters is critical
for which
an algorithm based on the gradient tree is put forward.The reconstruction images corresponding to both the absorption and scattering coefficients proved that the proposed algorithm can be implemented effectively with high quality results by the introduction of the binary line process.
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