The low-dimensional-model-based electromagnetic imaging is an emerging member of the big family of computational imaging, by which the low-dimensional models of underlying signals are incorporated into both data acquisition systems and reconstruction algorithms for electromagnetic imaging, in order to improve the imaging performance and break the bottleneck of existing electromagnetic imaging methodologies. Over the past decade, we have witnessed profound impacts of the low-dimensional models on electromagnetic imaging. However, the low-dimensional-model-based electromagnetic imaging remains at its early stage, and many important issues relevant to practical applications need to be carefully investigated. Especially, we are in the big-data era of booming electromagnetic sensing, by which massive data are being collected for retrieving very detailed information of probed objects. This survey gives a comprehensive overview on the low-dimensional models of structure signals, along with its relevant theories and low-complexity algorithms of signal recovery. Afterwards, we review the recent advancements of low-dimensional-model-based electromagnetic imaging in various applied areas. We hope this survey could bridge the gap between the model-based signal processing and the electromagnetic imaging, advance the development of low-dimensional-model-based electromagnetic imaging, and serve as a basic reference in the future research of the electromagnetic imaging across various frequency ranges.
Article navigation
6 June 2018
Research Article|
June 06 2018
A Survey on the Low-Dimensional-Model-based Electromagnetic Imaging Available to Purchase
Martin Hurtado;
Martin Hurtado
National University of La Plata
Search for other works by this author on:
Bing Chen Zhang;
Bing Chen Zhang
Chinese Academy of Sciences
Search for other works by this author on:
Tian Jin;
Tian Jin
National University of Defense Technology
Search for other works by this author on:
Marija Nikolic Stevanovic;
Marija Nikolic Stevanovic
University of Belgrade
Search for other works by this author on:
Arye Nehorai
Arye Nehorai
Washington University in St. Louis
Search for other works by this author on:
Online ISSN: 1932-8354
Print ISSN: 1932-8346
© 2018 Lianlin Li, Martin Hurtado, Feng Xu, Bing Chen Zhang, Tian Jin, Tie Jun Cui, Marija Nikolic Stevanovic and Arye Nehorai
2018
Lianlin Li, Martin Hurtado, Feng Xu, Bing Chen Zhang, Tian Jin, Tie Jun Cui, Marija Nikolic Stevanovic and Arye Nehorai
Licensed re-use rights only
Foundations and Trends in Signal Processing (2018) 12 (2): 107–199.
Citation
Li L, Hurtado M, Xu F, Zhang BC, Jin T, Xui TJ, Stevanovic MN, Nehorai A (2018), "A Survey on the Low-Dimensional-Model-based Electromagnetic Imaging". Foundations and Trends in Signal Processing, Vol. 12 No. 2 pp. 107–199, doi: https://doi.org/10.1561/2000000103
Download citation file:
Suggested Reading
A novel double sparse structure dictionary learning–based compressive data-gathering algorithm in wireless sensor networks
Sensor Review (January,2021)
A novel compressive sensing method based on SVD sparse random measurement matrix in wireless sensor network
Engineering Computations (November,2016)
The near‐field processing and narrowband imaging algorithm for MIMO array
COMPEL (March,2013)
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
