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Color correction for scanner and printer using B-spline CMAC neural networks

机译:使用B样条CMAC神经网络的扫描仪和打印机的色彩校正

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The process of eliminating the color errors from the gamut mismatch, resolution conversion, quantization and nonlinearity between scanner and printer is as an essential issue of color reproduction. This paper presents a new formation based on the generalized inverse plant control for the color error reduction process. In our formulation, the printer input and scanner output corresponds to the input and output of a system plant respectively. Obviously, if the printer input equals the scanner output, then there are no color errors involved in the entire system. In other words, the plant becomes an identity system. To achieve this goal, a plant generalized inverse should be identified and added to the original system. Since the system of a combination of both scanner and printer is highly nonlinear, CMAC-based neural networks, which have the capability to learn arbitrary nonlinearity, are applied to identify the plant generalized inverse. The CMAC network is a perceptron-like feedforward structure with associative memory properties. Moreover, it learns orders of magnitude more rapidly than typical implementations of back propagation in the feedforward neural networks. Tests verify the effectiveness of the proposed method.
机译:消除色域不匹配,分辨率转换,量化和扫描仪与打印机之间的非线性的颜色错误的过程是颜色再现的重要问题。本文提出了一种基于广义逆工厂控制的新形式,用于减少颜色误差。在我们的公式中,打印机输入和扫描仪输出分别对应于系统工厂的输入和输出。显然,如果打印机输入等于扫描仪输出,则整个系统中不会涉及颜色错误。换句话说,工厂成为身份系统。为实现此目标,应识别工厂广义逆并将其添加到原始系统中。由于扫描仪和打印机的组合系统是高度非线性的,因此将具有学习任意非线性能力的基于CMAC的神经网络用于识别工厂广义逆。 CMAC网络是具有关联存储特性的类似感知器的前馈结构。此外,它比前馈神经网络中反向传播的典型实现更快地学习了数量级。测试验证了所提方法的有效性。

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