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Exploring discrete approaches to lossy compression schemes for natural image patches

机译:探索自然图像斑块有损压缩方案的离散方法

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Optimal compressions in a rate-distortion sense are usually discrete random variables, so clever discretizations of natural images might be key to developing better compression schemes. A new image compression method achieved good perceptual coding performance by using as primitives memories of a Hopfield network trained on discretized natural images. Here we explore why Hopfield network fixed-points are good lossy perceptual features even though the implied generative model (a second-order Lenz-Ising model) does not provide a state-of-the-art match to the true probability distribution of discretized natural images. Even so, we demonstrate that this deterministic coding scheme can achieve near-optimality by comparing with the rate-distortion function for discretized natural image patches.
机译:速率失真意义上的最佳压缩通常是离散的随机变量,因此自然图像的巧妙离散化可能是开发更好的压缩方案的关键。一种新的图像压缩方法通过将在离散自然图像上训练的Hopfield网络的内存用作原语,从而获得了良好的感知编码性能。在这里,我们探讨了为什么即使隐含的生成模型(二阶Lenz-Ising模型)没有提供与离散自然的真实概率分布的最新匹配,Hopfield网络不动点仍具有良好的有损感知功能的原因图片。即使这样,我们也证明了这种确定性编码方案可以通过与离散化自然图像斑块的速率失真函数进行比较来实现近乎最佳的效果。

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