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3D SOM Leaming And Neighborhood Algorithm

机译:3D SOM学习和邻域算法

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Learning and neighborhood algorithm are an important part of 3D SOM algorithm. The five kinds of learning algorithm and Three kinds of neighborhood shape and three kinds of neighborhood decay functions for three-dimensional self-organizing feature maps (3DSOM) algorithm were proposed in this paper. And the algorithm were applied in three-dimensional image compression coding. Experimental results show that the quadratic function learning algorithm achieved the best peak signal to noise ratio (PSNR) and the 3D orthogonal cross neighborhood shape and memory function algorithm has better peak signal to noise ratio (PSNR) and subject quality.
机译:学习和邻域算法是3D SOM算法的重要组成部分。提出了三维自组织特征图(3DSOM)算法的五种学习算法,三种邻域形状和三种邻域衰减函数。并将该算法应用于三维图像压缩编码中。实验结果表明,二次函数学习算法获得了最佳的峰值信噪比(PSNR),而3D正交交叉邻域形状和记忆函数算法则具有了更好的峰值信噪比(PSNR)和被摄体质量。

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