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Image generation and inversion based on a probabilistic recurrent neural model

机译:基于概率复发性神经模型的图像生成与反演

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The iterated function system composed of contraction mappings can generate various intricate images with very few parameters in simple and iterative computations. A recurrent neural model with probabilistically weighted connections is proposed as a nonlinear iterated function system. To find connection weights of the recurrent neural model that generates an approximate version of a given gray scale image, an adaptive function estimation method, using the square error criteria, is proposed. Its coding efficiency is evaluated.
机译:由收缩映射组成的迭代函数系统可以在简单和迭代计算中产生具有很少的参数的各种复杂的图像。具有概率加权连接的经常性神经模型作为非线性迭代功能系统。为了找到产生给定灰度图像的近似版本的复发性神经模型的连接权重,提出了使用平方误差标准的自适应功能估计方法。评估其编码效率。

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