FFTLasso: Large-Scale LASSO in the Fourier Domain

Adel Bibi, Hani Itani, Bernard Ghanem
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引用次数: 3

Abstract

In this paper, we revisit the LASSO sparse representation problem, which has been studied and used in a variety of different areas, ranging from signal processing and information theory to computer vision and machine learning. In the vision community, it found its way into many important applications, including face recognition, tracking, super resolution, image denoising, to name a few. Despite advances in efficient sparse algorithms, solving large-scale LASSO problems remains a challenge. To circumvent this difficulty, people tend to downsample and subsample the problem (e.g. via dimensionality reduction) to maintain a manageable sized LASSO, which usually comes at the cost of losing solution accuracy. This paper proposes a novel circulant reformulation of the LASSO that lifts the problem to a higher dimension, where ADMM can be efficiently applied to its dual form. Because of this lifting, all optimization variables are updated using only basic element-wise operations, the most computationally expensive of which is a 1D FFT. In this way, there is no need for a linear system solver nor matrix-vector multiplication. Since all operations in our FFTLasso method are element-wise, the subproblems are completely independent and can be trivially parallelized (e.g. on a GPU). The attractive computational properties of FFTLasso are verified by extensive experiments on synthetic and real data and on the face recognition task. They demonstrate that FFTLasso scales much more effectively than a state-of-the-art solver.
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FFTLasso:傅里叶域的大规模LASSO
在本文中,我们重新审视LASSO稀疏表示问题,该问题已被研究并应用于各种不同的领域,从信号处理和信息论到计算机视觉和机器学习。在视觉领域,它进入了许多重要的应用,包括人脸识别、跟踪、超分辨率、图像去噪等等。尽管高效的稀疏算法取得了进步,但解决大规模LASSO问题仍然是一个挑战。为了规避这个困难,人们倾向于对问题进行下采样和子采样(例如,通过降维),以保持可管理的LASSO大小,这通常是以失去解决方案准确性为代价的。本文提出了一种新的循环重构LASSO,将问题提升到一个更高的维度,其中ADMM可以有效地应用于其对偶形式。由于这种提升,所有优化变量都只使用基本的元素操作进行更新,其中计算成本最高的是1D FFT。这样,就不需要线性系统求解器,也不需要矩阵向量乘法。由于我们的FFTLasso方法中的所有操作都是基于元素的,所以子问题是完全独立的,并且可以简单地并行化(例如在GPU上)。在合成数据和真实数据以及人脸识别任务上进行了大量的实验,验证了FFTLasso的计算性能。他们证明FFTLasso比最先进的求解器更有效。
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