基于反向传播量子神经网络的高斯图像模糊PSF估计

Kim Gao, Yan F. Zhang, Ying-hui Liu, Xiao-mei Chen, G. Ni
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引用次数: 4

摘要

在空间遥感成像过程中,多重退化因素导致图像高斯模糊。恢复退化图像的前提是尽可能精确地估计成像系统的点扩散函数(PSF)。由于退化过程相当复杂,退化系统的传递函数通常是完全或部分未知的,这使得精确辨识PSF变得相当困难。考虑到量子过程与成像过程在概率和统计领域的相似性,提出了一种利用多层前馈反向传播量子神经网络(QBPNN)估计高斯退化成像系统PSF的新算法。与经典人工神经网络(ANN)不同的是,其学习阶段使用的量子神经元中引入了权值连接系数和相位系数两个可调参数。该方法通过建立不同的训练集,克服了对初始值依赖和计算量大的局限性。实验结果表明,与传统的PSF估计结果相比,该方法具有更高的精度、更快的收敛速度和更强的泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PSF estimation for Gaussian image blur using back-propagation quantum neural network
During spatial remote sensing imaging procedure, combined degradation factors conduce to Gaussian image blurring. The precondition of restoring the degraded image is to estimate point spread function (PSF) of the imaging system as precisely as possible. Because the depredating processes are quite complex, the transfer function of the degraded system is often completely or partly unknown, which makes it quite difficult to identify the precise PSF. Considering the similarity between the quantum process and imaging process in the probability and statistics fields, a novel algorithm is proposed by using multilayer feed-forward back-propagation quantum neural network (QBPNN) to estimate PSF of the Gaussian degraded imaging system. Different from the classical artificial neural network (ANN), 2 adjustable parameters of weight connection coefficient and phase coefficient are introduced in its quantum neurons used in learning stage. By establishing different training sets, this estimation method can overcome the limitation in the dependence on initial values and large amount of computation. Test results show that this method can achieve higher precision, faster convergence and stronger generalization ability comparing with the traditional PSF estimation results.
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