This paper deals with fault isolation in nonlinear analog circuits with tolerance under an insufficient number of independent voltage measurements.A neural network-based L1-norm optimization approach is proposed and u...This paper deals with fault isolation in nonlinear analog circuits with tolerance under an insufficient number of independent voltage measurements.A neural network-based L1-norm optimization approach is proposed and utilized in locating the most likely faulty elements in nonlinear circuits.The validity of the proposed method is verified by both extensive computer simulations and practical examples.One simulation example is presented in the paper.展开更多
在最大后验概率(Maximum A Posterior,MAP)的基础上,结合图像类推(Image Analogies,IA)思想,提出一种序列图像超分辨率重建方法——MAPIA(Maximum A Posterior Image Analogies)。该算法先利用传统MAP方法将序列图像进行超分辨率重建,...在最大后验概率(Maximum A Posterior,MAP)的基础上,结合图像类推(Image Analogies,IA)思想,提出一种序列图像超分辨率重建方法——MAPIA(Maximum A Posterior Image Analogies)。该算法先利用传统MAP方法将序列图像进行超分辨率重建,然后在序列图像中选取一帧图像与重建后的图像构造训练集合的图像对,学习它们之间的关系,利用图像类推技术进行超分辨率重建。实验证明文中方法不仅能有效提高图像的清晰度,而且较其它的方法,能得到边缘更加清晰、细节更加突出的重建图像。展开更多
文摘This paper deals with fault isolation in nonlinear analog circuits with tolerance under an insufficient number of independent voltage measurements.A neural network-based L1-norm optimization approach is proposed and utilized in locating the most likely faulty elements in nonlinear circuits.The validity of the proposed method is verified by both extensive computer simulations and practical examples.One simulation example is presented in the paper.
文摘在最大后验概率(Maximum A Posterior,MAP)的基础上,结合图像类推(Image Analogies,IA)思想,提出一种序列图像超分辨率重建方法——MAPIA(Maximum A Posterior Image Analogies)。该算法先利用传统MAP方法将序列图像进行超分辨率重建,然后在序列图像中选取一帧图像与重建后的图像构造训练集合的图像对,学习它们之间的关系,利用图像类推技术进行超分辨率重建。实验证明文中方法不仅能有效提高图像的清晰度,而且较其它的方法,能得到边缘更加清晰、细节更加突出的重建图像。