A popular algorithm for hyperspectral image interpretation is the automatic target generation process (ATGP). ATGP creates a set of targets from image data in an unsupervised fashion without prior knowledge. It can be used to search a specific target in unknown scenes and when a target's size is smaller than a single pixel. Its application has been demonstrated in many fields including geology, agriculture, and intelligence. However, the algorithm requires long time to process due to the massive amount of data. To expedite the process, the graphics processing units (GPUs) are an attractive alternative in comparison with traditional CPU architectures. In this paper, we propose a GPU-based massively parallel version of ATGP, which provides re...
Abstract—Spatial/spectral algorithms have been shown in pre-vious work to be a promising approach to...
The advances in sensor development in the last few years allow obtaining multi and hyperspectral im...
We investigate the use of a flexible grid architecture for hyperspectral image processing. Recording...
Effective classification algorithm is a key to extracting interesting and useful information from hy...
International audienceHyperspectral imaging, which records a detailed spectrum of light arriving in ...
Real-time implementation of hyperspectral imagery is an emerging research area which has notable rem...
Remote sensing is the acquisition of physical response from an object without touch or contact, ofte...
The storage and processing of remotely sensed hyperspectral images (HSIs) is facing important challe...
Onboard target detection of hyperspectral imagery (HSI), considered as a significant remote sensing ...
This paper examines the optimization possibilities of using different GPU memory for a hyperspectral...
This paper evaluates the potential of embedded graphic processing units (GPU) in the Nvidia's Tegra ...
Remote hyperspectral sensors collect large amounts of data per flight usually with low spatial resol...
The identification of signal subspace is a crucial operation in hyperspectral imagery, enabling a co...
tionizing the way remotely sensed data is collected, managed and analyzed. The incorporation of late...
The application of compressive sensing (CS) to hyperspectral images is an active area of research ov...
Abstract—Spatial/spectral algorithms have been shown in pre-vious work to be a promising approach to...
The advances in sensor development in the last few years allow obtaining multi and hyperspectral im...
We investigate the use of a flexible grid architecture for hyperspectral image processing. Recording...
Effective classification algorithm is a key to extracting interesting and useful information from hy...
International audienceHyperspectral imaging, which records a detailed spectrum of light arriving in ...
Real-time implementation of hyperspectral imagery is an emerging research area which has notable rem...
Remote sensing is the acquisition of physical response from an object without touch or contact, ofte...
The storage and processing of remotely sensed hyperspectral images (HSIs) is facing important challe...
Onboard target detection of hyperspectral imagery (HSI), considered as a significant remote sensing ...
This paper examines the optimization possibilities of using different GPU memory for a hyperspectral...
This paper evaluates the potential of embedded graphic processing units (GPU) in the Nvidia's Tegra ...
Remote hyperspectral sensors collect large amounts of data per flight usually with low spatial resol...
The identification of signal subspace is a crucial operation in hyperspectral imagery, enabling a co...
tionizing the way remotely sensed data is collected, managed and analyzed. The incorporation of late...
The application of compressive sensing (CS) to hyperspectral images is an active area of research ov...
Abstract—Spatial/spectral algorithms have been shown in pre-vious work to be a promising approach to...
The advances in sensor development in the last few years allow obtaining multi and hyperspectral im...
We investigate the use of a flexible grid architecture for hyperspectral image processing. Recording...