Deep learning through sparse and low-rank modeling

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Bibliographic Information

Deep learning through sparse and low-rank modeling

edited by Zhangyang Wang, Yun Fu, Thomas S. Huang

(Computer vision and pattern recognition series / series editors, Horst Bischof, Kyoung Mu Lee, Sudeep Sarkar)

Academic Press, an imprint of Elsevier, c2019

  • : [pbk.]

Available at  / 5 libraries

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Includes bibliographical references and index

Description and Table of Contents

Description

Deep Learning through Sparse Representation and Low-Rank Modeling bridges classical sparse and low rank models-those that emphasize problem-specific Interpretability-with recent deep network models that have enabled a larger learning capacity and better utilization of Big Data. It shows how the toolkit of deep learning is closely tied with the sparse/low rank methods and algorithms, providing a rich variety of theoretical and analytic tools to guide the design and interpretation of deep learning models. The development of the theory and models is supported by a wide variety of applications in computer vision, machine learning, signal processing, and data mining. This book will be highly useful for researchers, graduate students and practitioners working in the fields of computer vision, machine learning, signal processing, optimization and statistics.

Table of Contents

1. Introduction2. Bi-Level Sparse Coding: A Hyperspectral Image Classification Example3. Deep l0 Encoders: AModel Unfolding Example4. Single Image Super-Resolution: FromSparse Coding to Deep Learning5. From Bi-Level Sparse Clustering to Deep Clustering6. Signal Processing7. Dimensionality Reduction8. Action Recognition9. Style Recognition and Kinship Understanding10. Image Dehazing: Improved Techniques11. Biomedical Image Analytics: Automated Lung Cancer Diagnosis

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