The dual-channel synthetic aperture radar (SAR) system is widely applied in the field of ground moving-target indication (GMTI). With the increase of the imaging resolution, the resulting substantial raw data samples increase the transmission and storage burden. We tackle the problem by adopting the joint sparsity model 1 (JSM-1) in distributed compressed sensing (DCS) to exploit the correlation between the two channels of the dual-channel SAR system. We propose a novel algorithm, namely the hierarchical variational Bayesian based distributed compressed sensing (HVB-DCS) algorithm for the JSM-1 model, which decouples the common component from the innovation components by applying variational Bayesian approximation. Using the proposed HVB-DC...
Abstract—Azimuth multichannel is a promising technique of realizing high resolution and wide swath f...
This paper presents a new SAR ground moving target estimation and imaging algorithm based on a nove...
This chapter is concerned with the application of sparsity and compressed sensing ideas in imaging ...
Compressed sensing (also known as Compressive sampling) is a new mathematical tool for data processi...
In this paper, a novel synthetic aperture radar (SAR) ground moving target imaging (GMTIm) algorithm...
In this paper a new ground moving target indication method based on multichannel synthetic aperture ...
The first step of ground moving target indication is the differentiation between moving and nonmovin...
The multichannel or wide-angle imaging performance of synthetic aperture radar (SAR) can be improved...
Synthetic aperture radar (SAR) was first invented in the early 1950s as the remote surveillance ins...
Abstract In this paper, a novel synthetic aperture radar (SAR) two-dimensional (2-D) imaging algorit...
Ground moving target imaging (GMTIm) is considered one of the most important applications of synthet...
Conference PaperCompressed sensing is an emerging field based on the revelation that a small collect...
This paper proposes a novel simultaneous monostatic and bistatic ground moving target indication (GM...
A new multi-frequency compressed sensing (CS) model is introduced for the 2-D near-field microwave a...
This paper derives a signal processing method based on compressed sensing (CS) for multi-channel hig...
Abstract—Azimuth multichannel is a promising technique of realizing high resolution and wide swath f...
This paper presents a new SAR ground moving target estimation and imaging algorithm based on a nove...
This chapter is concerned with the application of sparsity and compressed sensing ideas in imaging ...
Compressed sensing (also known as Compressive sampling) is a new mathematical tool for data processi...
In this paper, a novel synthetic aperture radar (SAR) ground moving target imaging (GMTIm) algorithm...
In this paper a new ground moving target indication method based on multichannel synthetic aperture ...
The first step of ground moving target indication is the differentiation between moving and nonmovin...
The multichannel or wide-angle imaging performance of synthetic aperture radar (SAR) can be improved...
Synthetic aperture radar (SAR) was first invented in the early 1950s as the remote surveillance ins...
Abstract In this paper, a novel synthetic aperture radar (SAR) two-dimensional (2-D) imaging algorit...
Ground moving target imaging (GMTIm) is considered one of the most important applications of synthet...
Conference PaperCompressed sensing is an emerging field based on the revelation that a small collect...
This paper proposes a novel simultaneous monostatic and bistatic ground moving target indication (GM...
A new multi-frequency compressed sensing (CS) model is introduced for the 2-D near-field microwave a...
This paper derives a signal processing method based on compressed sensing (CS) for multi-channel hig...
Abstract—Azimuth multichannel is a promising technique of realizing high resolution and wide swath f...
This paper presents a new SAR ground moving target estimation and imaging algorithm based on a nove...
This chapter is concerned with the application of sparsity and compressed sensing ideas in imaging ...