© Springer International Publishing Switzerland 2016.Real-time hyperspectral image classification is a necessary primitive in many remotely sensed image analysis applications. Previous work has shown that Support Vector Machines (SVMs) can achieve high classification accuracy, but unfortunately it is very computationally expensive. This paper presents a scalable dataflow accelerator on FPGA for real-time SVM classification of hyperspectral images.To address data dependencies, we adapt multi-class classifier based on Hamming distance. The architecture is scalable to high problem dimensionality and available hardware resources. Implementation results show that the FPGA design achieves speedups of 26x, 1335x, 66x and 14x compared with implemen...
Real-time target detection for hyperspectral images (HSI) has received considerable interest in rece...
Cascade support vector machines (SVMs) are optimized to efficiently handle problems, where the major...
Cascade support vector machines (SVMs) are optimized to efficiently handle problems, where the major...
Abstract. Real-time hyperspectral image classification is a necessary primitive in many remotely sen...
This work present an efficient hardware architecture of Support Vector Machine (SVM) for the classif...
Because of the downlink bandwidth bottleneck and power limitation on satellite, the demands for low ...
The storage and processing of remotely sensed hyperspectral images (HSIs) is facing important challe...
Hyperspectral remote sensing applications have been greatly increased in the last decades and are ex...
Implementing fast and accurate Support Vector Machine (SVM) classifiers in embedded systems with lim...
Recent advances in photonics and imaging technology allow the development of cutting-edge, lightweig...
Progress in sensor technology leads to an ever-increasing amount of remote sensing data which needs ...
Hyperspectral imaging is used for surveillance and other real-time applications. Hyperspectral imagi...
Hyperspectral Imager for Oceanographic Applications (HYPSO) mission is being developed as a part of ...
The identification of signal subspace is a crucial operation in hyperspectral imagery, enabling a co...
High spectral, spatial, vertical and temporal resolution data are increasingly available and result ...
Real-time target detection for hyperspectral images (HSI) has received considerable interest in rece...
Cascade support vector machines (SVMs) are optimized to efficiently handle problems, where the major...
Cascade support vector machines (SVMs) are optimized to efficiently handle problems, where the major...
Abstract. Real-time hyperspectral image classification is a necessary primitive in many remotely sen...
This work present an efficient hardware architecture of Support Vector Machine (SVM) for the classif...
Because of the downlink bandwidth bottleneck and power limitation on satellite, the demands for low ...
The storage and processing of remotely sensed hyperspectral images (HSIs) is facing important challe...
Hyperspectral remote sensing applications have been greatly increased in the last decades and are ex...
Implementing fast and accurate Support Vector Machine (SVM) classifiers in embedded systems with lim...
Recent advances in photonics and imaging technology allow the development of cutting-edge, lightweig...
Progress in sensor technology leads to an ever-increasing amount of remote sensing data which needs ...
Hyperspectral imaging is used for surveillance and other real-time applications. Hyperspectral imagi...
Hyperspectral Imager for Oceanographic Applications (HYPSO) mission is being developed as a part of ...
The identification of signal subspace is a crucial operation in hyperspectral imagery, enabling a co...
High spectral, spatial, vertical and temporal resolution data are increasingly available and result ...
Real-time target detection for hyperspectral images (HSI) has received considerable interest in rece...
Cascade support vector machines (SVMs) are optimized to efficiently handle problems, where the major...
Cascade support vector machines (SVMs) are optimized to efficiently handle problems, where the major...