There is a tremendous demand for increasingly efficient ways of both capturing and processing high-dimensional datasets of large size. When capturing such datasets, a promising recent trend has developed based on the recognition that, many high-dimensional datasets have low-dimensional structures. For example, the notion of sparsity is a requisite in the compressed sensing (CS) field, which allows for accurate signal reconstruction from sub-Nyquist sampled measurements given certain conditions. When processing such datasets, the recently developed deep learning is a powerful tool, able to extract high-level and complex abstractions from massive amounts of data. CS has a wide range of applications that include imaging, radar and many more. M...
With the development of intelligent networks such as the Internet of Things, network scales are beco...
We study the notion of Compressed Sensing (CS) as put forward in [14] and related work [20, 3, 4]. T...
Compressed representations are a fundamental building block in signal processing algorithms, whether...
2013-08-04Traditional compressed sensing (CS) approaches have been focused on the goal of reducing t...
Abstract Compressed sensing (CS) or compressive sampling has shown an enormous potential to reconstr...
In recent years, Machine Learning (ML), especially deep learning, has developed rapidly and been wid...
As the development of high-density sensors, the compressed sensing (CS) and sparse representation ha...
Compressed sensing (CS) theory has demonstrated that sparse signals can be reconstructed from far fe...
The theoretical problem of finding the solution to an underdetermined set of linear equations has fo...
Abstract Compressed sensing (CS) is a signal processing framework, which reconstructs a signal from ...
Sparse linear models pose dual views toward data that are embodied in compressive sensing and sparse...
The theoretical problem of finding the solution to an underdeterminedset of linear equations has for...
Compressed sensing has a wide range of applications that include error correction, imaging,...
Reconstruction of continuous signals from a number of their discrete samples is central to digital s...
Abstract Compressed sensing (CS) is an efficient technique to acquire sparse signals in many wirele...
With the development of intelligent networks such as the Internet of Things, network scales are beco...
We study the notion of Compressed Sensing (CS) as put forward in [14] and related work [20, 3, 4]. T...
Compressed representations are a fundamental building block in signal processing algorithms, whether...
2013-08-04Traditional compressed sensing (CS) approaches have been focused on the goal of reducing t...
Abstract Compressed sensing (CS) or compressive sampling has shown an enormous potential to reconstr...
In recent years, Machine Learning (ML), especially deep learning, has developed rapidly and been wid...
As the development of high-density sensors, the compressed sensing (CS) and sparse representation ha...
Compressed sensing (CS) theory has demonstrated that sparse signals can be reconstructed from far fe...
The theoretical problem of finding the solution to an underdetermined set of linear equations has fo...
Abstract Compressed sensing (CS) is a signal processing framework, which reconstructs a signal from ...
Sparse linear models pose dual views toward data that are embodied in compressive sensing and sparse...
The theoretical problem of finding the solution to an underdeterminedset of linear equations has for...
Compressed sensing has a wide range of applications that include error correction, imaging,...
Reconstruction of continuous signals from a number of their discrete samples is central to digital s...
Abstract Compressed sensing (CS) is an efficient technique to acquire sparse signals in many wirele...
With the development of intelligent networks such as the Internet of Things, network scales are beco...
We study the notion of Compressed Sensing (CS) as put forward in [14] and related work [20, 3, 4]. T...
Compressed representations are a fundamental building block in signal processing algorithms, whether...