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Theory of projection onto the narrow quantization constraint set and its application

机译:窄量化约束集的投影理论及其应用

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Since the postprocessing of coded images using a priori information depends on the constraints imposed on the coded images, it is important to utilize constraints that are best suited to postprocessing techniques. Among the constraint sets, the quantization constraint set (QCS) is commonly used in the iterative algorithms that are especially based on the theory of projections onto convex sets (POCS). The converged image in the iteration is usually a boundary point of the QCS. But, we can easily conjecture that the possible location of the original image is inside the QCS. In order to obtain an image inside the QCS, we proposed a new convex constraint set, a subset of the QCS called narrow QCS (NQCS) as a substitute for the QCS. In order to demonstrate that the NQCS works better than the QCS on natural images, we present mathematical analysis with examples and simulations by reformulating the iterative algorithm of the constrained minimization problem or of the POCS using the probability theory. Since the initial image of the iteration is the centroid of the QCS, we reach a conclusion that the first iteration is enough to recover the coded image, which implies no need of any theories that guarantee the convergences.
机译:由于使用先验信息对编码图像进行后处理取决于施加在编码图像上的约束,因此利用最适合于后处理技术的约束非常重要。在约束集中,量化约束集(QCS)通常用于迭代算法中,尤其是基于凸集投影(POCS)的理论。迭代中的收敛图像通常是QCS的边界点。但是,我们可以轻松地推测出原始图像的可能位置在QCS内部。为了获得QCS内的图像,我们提出了一个新的凸约束集,称为QCS(NQCS)的QCS子集可以替代QCS。为了证明NQCS在自然图像上比QCS更好,我们通过使用概率论重新构造约束最小化问题或POCS的迭代算法,通过实例和仿真给出数学分析。由于迭代的初始图像是QCS的质心,我们得出的结论是,第一次迭代足以恢复编码图像,这意味着不需要任何理论来保证收敛。

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