An MSE Approach For Training And Coding Steered Mixtures Of Experts

M. Tok, Rolf Jongebloed, Lieven Lange, Erik Bochinski, T. Sikora
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引用次数: 10

Abstract

Previous research has shown the interesting properties and potential of Steered Mixtures-of-Experts (SMoE) for image representation, approximation, and compression based on EM optimization. In this paper we introduce an MSE optimization method based on Gradient Descent for training SMoEs. This allows improved optimization towards PSNR and SSIM and de-coupling of experts and gates. In consequence we can now generate very high quality SMoE models with significantly reduced model complexity compared to previous work and much improved edge representations. Uased on this strategy a block-based image coder was developed using Mixture-of-Experts that uses very simple experts with very few model parameters. Experimental evaluations shows that a significant compression gain can be achieved compared to JPEG for low bit rates.
一种训练和编码操纵混合专家的MSE方法
先前的研究已经显示了基于EM优化的转向混合专家(SMoE)在图像表示、逼近和压缩方面的有趣特性和潜力。本文介绍了一种基于梯度下降的最小均方误差优化方法。这允许改进对PSNR和SSIM的优化以及专家和门的解耦。因此,我们现在可以生成非常高质量的SMoE模型,与以前的工作相比,模型复杂性显著降低,边缘表示也得到了很大改善。基于这一策略,使用混合专家开发了基于块的图像编码器,使用非常简单的专家和很少的模型参数。实验评估表明,与低比特率的JPEG相比,可以获得显着的压缩增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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