We propose a new FPGA-based architecture able to speed up the Lucy-Richardson algorithm (LRA) for space-variant image deconvolution. The architecture exploits the possibility to distribute data into different memory blocks in the FPGA. In such a way, the algorithm execution is split into several channels operating in parallel. Since the LRA is implemented via an iterative, space-variant convolution, the strategies adopted in this paper can be exploited in other similar image processing algorithms
In this work, an implementation of linear filtering and morphological image operation using a EDK 1...
The Digital Image Processing convolution is core block for Convolution Neural Networks (CNN) which i...
Fast and efficient operation is a major challenge for complex image processing algorithms executed i...
In this work we propose a new FPGA-based architecture able to speed up the Lucy-Richardson algorithm...
The Lucy-Richardson algorithm is a very well-known method for non-blind image deconvolution. It can ...
Deconvolution is an important technique in image processing that may be used to recover images that ...
This paper proposes an implementation of a Richardson-Lucy (RL) deconvolution method to reduce the s...
Several supercomputer vendors now offer reconfigurable computing (RC) systems, combining general-pur...
FPGA devices in Reconfigurable Computers (RCs) al-low datapath, memory, and processing elements (PEs...
Abstract. Convolution is a very important operation within artificial vision. It can be characterize...
Software-based algorithm design is still the mainstream of preliminary development. However, how to ...
n this article, we present a new reconfigurable parallel architecture oriented to video-rate compute...
An architecture capable of performing the inverse Tone Mapping to convert a Low Dynamic Range image ...
[[abstract]]This paper proposed an image processing system based on hardware accelerator design meth...
Nine articles have been published in this Special Issue on image processing using field programmable...
In this work, an implementation of linear filtering and morphological image operation using a EDK 1...
The Digital Image Processing convolution is core block for Convolution Neural Networks (CNN) which i...
Fast and efficient operation is a major challenge for complex image processing algorithms executed i...
In this work we propose a new FPGA-based architecture able to speed up the Lucy-Richardson algorithm...
The Lucy-Richardson algorithm is a very well-known method for non-blind image deconvolution. It can ...
Deconvolution is an important technique in image processing that may be used to recover images that ...
This paper proposes an implementation of a Richardson-Lucy (RL) deconvolution method to reduce the s...
Several supercomputer vendors now offer reconfigurable computing (RC) systems, combining general-pur...
FPGA devices in Reconfigurable Computers (RCs) al-low datapath, memory, and processing elements (PEs...
Abstract. Convolution is a very important operation within artificial vision. It can be characterize...
Software-based algorithm design is still the mainstream of preliminary development. However, how to ...
n this article, we present a new reconfigurable parallel architecture oriented to video-rate compute...
An architecture capable of performing the inverse Tone Mapping to convert a Low Dynamic Range image ...
[[abstract]]This paper proposed an image processing system based on hardware accelerator design meth...
Nine articles have been published in this Special Issue on image processing using field programmable...
In this work, an implementation of linear filtering and morphological image operation using a EDK 1...
The Digital Image Processing convolution is core block for Convolution Neural Networks (CNN) which i...
Fast and efficient operation is a major challenge for complex image processing algorithms executed i...