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ENSEMBLE SPARSE MODELS FOR IMAGE ANALYSIS AND RESTORATION

机译:用于图像分析和恢复的封装稀疏模型

摘要

Methods and systems for recovering corrupted/degraded images using approximations obtained from an ensemble of multiple sparse models are disclosed. Sparse models may represent images parsimoniously using elementary patterns from a “dictionary” matrix. Various embodiments of the present disclosure involve simple and computationally efficient dictionary design approach along with low-complexity reconstruction procedure that may use a parallel-friendly table-lookup process. Multiple dictionaries in an ensemble model may be inferred sequentially using greedy forward-selection approach and can incorporate bagging/boosting strategies, taking into account application-specific degradation. Recovery performance obtained using the proposed approaches with image super resolution and compressive recovery can be comparable to or better than existing sparse modeling based approaches, at reduced computational complexity. By including ensemble models in hierarchical multilevel learning, where multiple dictionaries are inferred in each level, further performance improvements can be obtained in image recovery, without significant increase in computational complexity.
机译:公开了用于使用从多个稀疏模型的集合获得的近似来恢复损坏/退化的图像的方法和系统。稀疏模型可以使用“字典”矩阵中的基本模式来简约地表示图像。本公开的各种实施例涉及简单和计算有效的字典设计方法以及可以使用并行友好表查找过程的低复杂度重建过程。可以使用贪婪的前向选择方法依次推断出集成模型中的多个词典,并且可以考虑到特定于应用程序的降级,并入装袋/增强策略。使用所提出的具有图像超分辨率和压缩恢复的方法所获得的恢复性能可以与现有的基于稀疏建模的方法相媲美或更好,并且计算复杂度有所降低。通过在多层多级学习中包括集成模型(在每个级别中推断出多个词典),可以在图像恢复中获得进一步的性能改进,而不会显着增加计算复杂性。

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