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Hardware realization of higher-order CMAC model for color calibration

机译:用于颜色校准的高阶CMAC模型的硬件实现

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The process of eliminating color errors from the gamut mismatch, resolution conversion, quantization and nonlinearity between scanner and printer is usually recognized as an essential issue of color reproduction. To efficiently calibrate the nonlinearity between scanning/printing devices, we present a linear systolic array architecture to realize the higher-order CMAC neural network model and propose an extended direct weight cell address mapping scheme for weight retrieving. This mapping scheme exhibits fast computation speed in generating weight cell addresses. Some experiments are performed to evaluate the approximation capability of the higher-order CMAC neural network models. It is shown that the CMAC model behaves well for those trained regions over the input space and exhibits smooth approximation for those untrained regions over the input space.
机译:消除来自扫描仪和打印机之间的色域失配,分辨率转换,量化和非线性的颜色误差的过程通常被认为是颜色再现的基本问题。为了有效地校准扫描/打印设备之间的非线性,我们提出了一种线性收缩阵列架构,实现了更高阶的CMAC神经网络模型,并提出了一种扩展的直接重量小区地址映射方案,用于重量检索。该映射方案在生成权重细胞地址时表现出快速的计算速度。进行一些实验以评估高阶CMAC神经网络模型的近似能力。结果表明,CMAC模型对输入空间上的那些训练区域的表现良好,并且对输入空间上的那些未培训的区域表现出光滑的近似。

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