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Statistical-mechanical approach for analog neural network model used in image restoration

机译:图像恢复中使用模拟神经网络模型的统计 - 机械方法

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The ability to restore an image from signals received through a noisy channel is an important concern. This issue is related to the physics theory of spin-glass. In the theory, the Ising spin system is usually used for image restoration; however, a lot of calculation time is needed to obtain precise solution. As a result many researchers substitute the Ising spin model with the analog neural network model. We analyzed the analog neural network ability applied to the image restoration problem using the mean field theory. With the conventional image restoration method, the estimated overlap with the analog neural network model is equivalent to that of the Ising spin model. When parity codes are sent, the analog neural network's ability does not improve over the Ising spin model. If the noise variable is small, however, the performance of the analog neural network model is as good as the Ising spin model.
机译:通过嘈杂频道接收的信号恢复图像的能力是一个重要的问题。这个问题与旋转玻璃的物理理论有关。在该理论中,ising旋转系统通常用于图像恢复;但是,需要大量的计算时间来获得精确的解决方案。结果,许多研究人员用模拟神经网络模型代替了insing旋转模型。我们使用平均场理论分析了应用于图像恢复问题的模拟神经网络能力。利用传统的图像恢复方法,与模拟神经网络模型的估计重叠相当于inSing旋转模型的重叠。当发送奇偶校长时,模拟神经网络的能力不会改善incing旋转模型。然而,如果噪声变量很小,则模拟神经网络模型的性能与ising旋转模型一样好。

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