학술논문

Sparse Recovery and Dictionary Learning From Nonlinear Compressive Measurements
Document Type
Periodical
Source
IEEE Transactions on Signal Processing IEEE Trans. Signal Process. Signal Processing, IEEE Transactions on. 67(21):5659-5670 Nov, 2019
Subject
Signal Processing and Analysis
Communication, Networking and Broadcast Technologies
Computing and Processing
Quantization (signal)
Encoding
Machine learning
Dictionaries
Cost function
Signal processing algorithms
Distortion measurement
Sparse coding
dictionary learning
nonlinear measurements
saturation
quantization
1-bit sensing
Language
ISSN
1053-587X
1941-0476
Abstract
Sparse coding and dictionary learning are popular techniques for linear inverse problems such as denoising or inpainting. However in many cases, the measurement process is nonlinear, for example for clipped, quantized or 1-bit measurements. These problems have often been addressed by solving constrained sparse coding problems, which can be difficult to solve, and assuming that the sparsifying dictionary is known and fixed. Here we propose a simple and unified framework to deal with nonlinear measurements. We propose a cost function that minimizes the distance to a convex feasibility set, which models our knowledge about the nonlinear measurement. This provides an unconstrained, convex, and differentiable cost function that is simple to optimize, and generalizes the linear least squares cost commonly used in sparse coding. We then propose proximal based sparse coding and dictionary learning algorithms, that are able to learn directly from nonlinearly corrupted signals. We show how the proposed framework and algorithms can be applied to clipped, quantized and 1-bit data.