基于错误源分解的鲁棒字典学习

Zhuoyuan Chen, Ying Wu
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引用次数: 12

摘要

稀疏模型最近在许多视觉任务中显示出巨大的前景。在稀疏模型中使用学习过的字典通常可以优于干净数据中的预定义基。在实际应用中,训练数据和测试数据都可能被破坏,并且包含噪声和异常值。虽然近年来的研究试图处理损坏的数据,并在测试阶段取得了令人鼓舞的成果,但如何在训练阶段处理损坏仍然是一个非常困难的问题。与大多数现有的从干净数据中学习字典的方法相比,本文的目标是处理字典学习训练数据中的腐败和异常值。我们提出了一种将重构残差分解为两个分量的通用方法:小通用噪声的非稀疏分量和大异常值的稀疏分量。此外,进一步的分析揭示了我们的方法与“部分”字典学习方法之间的联系,该方法仅更新部分原型(或信息码字),其余(或噪声码字)固定。在合成数据和实际应用上的实验表明,这种新的鲁棒字典学习方法具有令人满意的性能。
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Robust Dictionary Learning by Error Source Decomposition
Sparsity models have recently shown great promise in many vision tasks. Using a learned dictionary in sparsity models can in general outperform predefined bases in clean data. In practice, both training and testing data may be corrupted and contain noises and outliers. Although recent studies attempted to cope with corrupted data and achieved encouraging results in testing phase, how to handle corruption in training phase still remains a very difficult problem. In contrast to most existing methods that learn the dictionary from clean data, this paper is targeted at handling corruptions and outliers in training data for dictionary learning. We propose a general method to decompose the reconstructive residual into two components: a non-sparse component for small universal noises and a sparse component for large outliers, respectively. In addition, further analysis reveals the connection between our approach and the ``partial'' dictionary learning approach, updating only part of the prototypes (or informative code words) with remaining (or noisy code words) fixed. Experiments on synthetic data as well as real applications have shown satisfactory performance of this new robust dictionary learning approach.
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