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Adaptive quantization and filtering using Gauss-Markov measure field models

机译:使用Gauss-Markov测量场模型的自适应量化和滤波

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We present a new class of models, derived form classical Markov Random Fields, that may be used for the solution of ill-posed problems in image processing and computational vision. They lead to reconstruction algorithms that are flexible, computationally efficient and biological plausible. To illustrate their use, we present their application to the reconstruction of the dominant orientation field and to the adaptive quantization and filtering of images in a variety of situations.
机译:我们展示了一类新的模型,派生形式的经典马尔可夫随机字段,其可用于图像处理和计算视觉中的不良问题。它们导致重建算法,这些算法是灵活的,计算的高效和生物合理的。为了说明他们的使用,我们将其应用于在各种情况下重建主导定位领域和自适应量化和滤波图像的自适应量化和滤波。

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