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Performance of multiresolution pattern classifiers in medical image encoding from wavelet coefficient distributions

机译:小波系数分布中医学图像编码的多分辨率模式分类器的性能

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The fidelity of the reconstructed image in an image coding/decoding scheme and the lowest transmission bit rate from rate-distortion theory can be predicted provided the image statistics are known. Currently popular subband image coding assumes Gaussian source with memory for optimal performance. However, most images do not follow the ideal distribution. The advantage of subband coding lies in the fact that the wavelet coefficients in decomposed subimages have probability distribution functions (pdf's) that can be modeled as a generalized Gaussian when proper parameters are chosen experimentally. However, the filter length chosen for digital implementation of a specific wavelet is crucial in shaping the pdf characteristics and hence in the ability to predict the achievable bit rate at minimum distortion in a quantization scheme. We have analyzed the pdf's of a number of wavelets and chosen filter lengths providing the best fit to a generalized Gaussian distribution for encoding an image by vector quantization of multiresolution wavelet subimages using an adaptive clustering. Our results demonstrate that the performance of the adaptive vector quantizer improves significantly when wavelet filter lengths are chosen to fit the generalized Gaussian distribution.
机译:可以预测从图像编码/解码方案中的重建图像和来自速率失真理论的最低透射比特率的重建图像的保真度可以提供图像统计。目前流行的子带图像编码假定具有内存的高斯源以获得最佳性能。但是,大多数图像都不遵循理想的分布。子带编码的优点在于分解的子图像中的小波系数具有概率分布函数(PDF),当实验地选择适当的参数时,可以被建模为广义高斯建模。然而,为特定小波的数字实现选择的滤波器长度在整形PDF特性方面是至关重要的,因此能够在量化方案中以最小失真预测可实现的比特率。我们已经分析了许多小波的PDF和所选择的滤波器长度,提供最适合于通过使用自适应聚类来编码图像的矢量量化来编码图像的广义高斯分布。 Our results demonstrate that the performance of the adaptive vector quantizer improves significantly when wavelet filter lengths are chosen to fit the generalized Gaussian distribution.

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