A New Adaptive Video Super-Resolution Algorithm With Improved Robustness to Innovations

14 Jun 2017Ricardo Augusto BorsoiGuilherme Holsbach CostaJosé Carlos Moreira Bermudez

In this paper, a new video super-resolution reconstruction (SRR) method with improved robustness to outliers is proposed. Although the R-LMS is one of the SRR algorithms with the best reconstruction quality for its computational cost, and is naturally robust to registration inaccuracies, its performance is known to degrade severely in the presence of innovation outliers... (read more)

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