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On Rate-Distortion Models for Natural Images and Wavelet Coding Performance

机译:自然图像的速率失真模型和小波编码性能

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Operational rate-distortion (RD) functions of most natural images, when compressed with state-of-the-art wavelet coders, exhibit a power-law behavior $D propto R^{-gamma}$ at moderately high rates, with $gamma$ being a constant depending on the input image, deviating from the well-known exponential form of the RD function $D propto 2^{-xi R}$ for bandlimited stationary processes. This paper explains this intriguing observation by investigating theoretical and operational RD behavior of natural images. We take as our source model the fractional Brownian motion (fBm), which is often used to model nonstationary behaviors in natural images. We first establish that the theoretical RD function of the fBm process (both in 1-D and 2-D) indeed follows a power law. Then we derive operational RD function of the fBm process when wavelet encoded based on water-filling principle. Interestingly, both the operational and theoretical RD functions behave as $Dpropto R^{-gamma}$ . For natural images, the values of $gamma$ are found to be distributed around 1. These results lend an information theoretical support to the merit of multiresolution wavelet compression of self-similar processes and, in particular, natural images that can be modelled by such processes. They may also prove useful in predicting performance of RD optimized image coders.
机译:大多数自然图像的运算率失真(RD)功能在使用最新的小波编码器进行压缩后,在中等高速率下表现出幂律行为$ D Proto R ^ {-gamma} $,其中$ gamma $是取决于输入图像的常数,与带限平稳过程的RD函数$ D proto 2 ^ {-xi R} $的指数形式不同。本文通过研究自然图像的理论和操作RD行为来解释这一有趣的观察。我们将分数布朗运动(fBm)作为源模型,通常将其用于对自然图像中的非平稳行为进行建模。我们首先确定fBm过程(在一维和二维中)的理论RD函数确实遵循幂定律。然后,根据充水原理对小波编码时的fBm过程进行RD运算。有趣的是,操作和理论RD函数均表现为$ Dpropto R ^ {-gamma} $。对于自然图像,发现$ gamma $的值分布在1左右。这些结果为自相似过程的多分辨率小波压缩的优点提供了信息理论支持,尤其是可以用这种方法建模的自然图像流程。在预测RD优化图像编码器的性能方面,它们也可能有用。

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