A Projection-Onto-Convex-Sets Interpretation of Cross-Entropy Based Image Super-Resolution Algorithms

M. Nadar, P. J. Sementilli, B. Hunt
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Abstract

Signal recovery problems are generally posed in the form of rigid constraints (constraint sets), flexible constraints (optimization functional) or a combination thereof. Minimum cross-entropy methods1,2 belong to this third category due to an implicit rigid non-negativity constraint. An elegant approach to solving problems of the first category for convex constraint sets is the Projection Onto Convex Sets (POCS)3 technique. POCS has been limited primarily to least-squares projections, although other distance measures have been proposed.4 In this paper, minimum cross-entropy methods are interpreted as parallel cross-entropic POCS algorithms. This interpretation provides a theoretical basis for including rigid constraints in iterative super-resolution algorithms.
基于交叉熵的图像超分辨率算法的投影-上凸集解释
信号恢复问题通常以刚性约束(约束集)、柔性约束(优化函数)或其组合的形式提出。最小交叉熵方法1,2由于隐含刚性非负性约束而属于第三类。求解第一类凸约束集问题的一种优雅方法是凸集投影(POCS)3技术。虽然也提出了其他距离测量方法,但POCS主要限于最小二乘预估本文将最小交叉熵方法解释为并行交叉熵POCS算法。这一解释为在迭代超分辨算法中加入刚性约束提供了理论基础。
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