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Robust and Fast Learning of Sparse Codes With Stochastic Gradient Descent

机译:随机梯度下降的稀疏代码的鲁棒快速学习

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Particular classes of signals, as for example natural images, can be encoded sparsely if appropriate dictionaries are used. Finding such dictionaries based on data samples, however, is a difficult optimization task. In this paper, it is shown that simple stochastic gradient descent, besides being much faster, leads to superior dictionaries compared to the Method of Optimal Directions (MOD) and the K-SVD algorithm. The gain is most significant in the difficult but relevant case of highly overlapping subspaces, i.e., when the data samples are jointly represented by a restricted set of dictionary elements. Moreover, the so-called Bag of Pursuits method is introduced as an extension of Orthogonal Matching Pursuit, and it is shown that it provides an improved approximation of the optimal sparse coefficients and, therefore, significantly improves the performance of the here proposed gradient descent as well as of the MOD and K-SVD approaches. Finally, it is shown how the Bag of Pursuits and a generalized version of the Neural Gas algorithm can be used to derive an even more powerful method for sparse coding. Performance is analyzed based on both synthetic data and the practical problem of image deconvolution. In the latter case, two different dictionaries are learned for sample images of buildings and flowers, respectively. It is demonstrated that the learned dictionaries do indeed adapt to the image class and that they therefore yield superior reconstruction results.An example implementation of the methods that are proposed in this paper can be found at http://www.inb.uni-luebeck.de/tools-demosgdl.
机译:如果使用适当的字典,则可以稀疏地编码信号的特定类别,例如自然图像。但是,基于数据样本查找此类词典是一项困难的优化任务。本文表明,与最优方向方法(MOD)和K-SVD算法相比,简单的随机梯度下降法不仅速度更快,而且还具有更好的字典效果。在高度重叠的子空间的困难但相关的情况下,即当数据样本由一组受限的字典元素共同表示时,增益是最重要的。此外,引入了所谓的“追踪袋”方法,作为“正交匹配追踪”的扩展,结果表明,它提供了最佳稀疏系数的改进近似值,因此显着提高了本文提出的梯度下降的性能。以及MOD和K-SVD方法。最后,显示了如何使用“追踪袋”和神经气体算法的广义版本来推导甚至更强大的稀疏编码方法。基于综合数据和图像反卷积的实际问题对性能进行了分析。在后一种情况下,分别学习了两个不同的字典来获取建筑物和花卉的样本图像。结果表明,学到的字典确实适合图像类,因此可以产生更好的重建结果。本文提出的方法的示例实现可在http://www.inb.uni-luebeck上找到。 .de / tools-demos / ngdl。

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