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Semi-Totalistic CNN Genes for Compact Image Compression

机译:用于紧凑图像压缩的半综合性CNN基因

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It is shown that using several tools for detecting emergent computation, a series of several tenths of genes useful for a novel, compact image compression scheme, were identified within the space of all 1024 semi-totalistic cellular automata (CA) with 5 neighbors (von Neumann neighborhood). Such cellular automata can be easily implemented on the CNN-UM using "B"-templates with only 5 elements. Spatio-temporal binary patterns with a fractal characteristic emerge in CNNs using such genes. These patterns are then used as codebooks for a simple-to-implement vectorial quantization scheme called CNN-VQ. Gray level images are split into bitplanes and each 8times8 block is approximated with its closest (in terms of Hamming distance) code-word form the CNN-generated codebook. Decoding is straightforward and includes a median filter to remove the impulsive noise specific to abovementioned encoding process. Natural images can be represented with less than 0.5 bpp while preserving a reasonable perceptual quality. While both the encoding and the decoding processes require no arithmetic circuits their mixed-signal implementation is extremely simple thus making the proposed scheme very attractive for low power, sensor integrated applications
机译:结果表明,使用几种用于检测新的工具的工具,在所有1024个半综合论蜂窝自动机(CA)的空间内识别了一种用于新颖的,具有新颖的紧凑型图像压缩方案的十分之一基因,其中包括5个邻居(Von Neumann邻里)。这种蜂窝自动机可以在CNN-UM上轻松实现使用“B” - 仅具有5个元素。用分形特征的时空二进制图案使用这种基因在CNN中出现。然后将这些模式用作代码本,用于称为CNN-VQ的简单实现的矢量量化方案。灰度级别图像被分成位平面,每个8箱8块近似(根据汉明距离)代码字构成CNN生成的码本。解码是简单的,并且包括中值滤波器,以去除特定于上述编码过程的脉冲噪声。自然图像可以用小于0.5 bpp表示,同时保留合理的感知质量。虽然编码和解码过程都不需要运算电路,但它们的混合信号实现非常简单,从而使所提出的方案非常有吸引力,对于低功耗,传感器集成应用

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