Deconvolution is an important technique in image processing that may be used to recover images that have been subjected to a blurring process, usually caused by atmospheric effects or limitations of the image capturing equipment. Noise in the image data means that the problem is ill-posed, and thus mathematically complex statistical estimation techniques must be employed. This complexity, and the high throughput levels required for video data, renders a real-time software implementation unfeasible, however the parallelism of FPGA devices makes them an ideal medium. In this paper an FPGA implementation of an accelerated Richardson-Lucy deconvolution algorithm will be presented. The design uses multistage separable filters as a hardware effic...
Historically, attaining high performance in image processing has always been a challenge since 1960s...
In this paper we propose a new algorithm for real-time filtering of video sequences corrupted by Poi...
The Digital Image Processing convolution is core block for Convolution Neural Networks (CNN) which i...
Deconvolution is an important technique in image processing that may be used to recover images that ...
The Lucy-Richardson algorithm is a very well-known method for non-blind image deconvolution. It can ...
This paper proposes an implementation of a Richardson-Lucy (RL) deconvolution method to reduce the s...
In this work we propose a new FPGA-based architecture able to speed up the Lucy-Richardson algorithm...
We propose a new FPGA-based architecture able to speed up the Lucy-Richardson algorithm (LRA) for s...
Abstract — In Digital Signal Processing, the convolution and deconvolution with a very long sequenc...
Digital signal processing. In Digital Signal Processing, the convolution and deconvolution with a v...
International audienceConvolution is an important operation in image processing applications, such a...
Abstract. Convolution is a very important operation within artificial vision. It can be characterize...
Two-dimensional (2-D) convolution is a widely used operation in image processing and computer vision...
Image convolution is a common algorithm that can be found in most graphics editors. It is used to fi...
The identification of moving objects is a basic step in computer vision. The identification begins w...
Historically, attaining high performance in image processing has always been a challenge since 1960s...
In this paper we propose a new algorithm for real-time filtering of video sequences corrupted by Poi...
The Digital Image Processing convolution is core block for Convolution Neural Networks (CNN) which i...
Deconvolution is an important technique in image processing that may be used to recover images that ...
The Lucy-Richardson algorithm is a very well-known method for non-blind image deconvolution. It can ...
This paper proposes an implementation of a Richardson-Lucy (RL) deconvolution method to reduce the s...
In this work we propose a new FPGA-based architecture able to speed up the Lucy-Richardson algorithm...
We propose a new FPGA-based architecture able to speed up the Lucy-Richardson algorithm (LRA) for s...
Abstract — In Digital Signal Processing, the convolution and deconvolution with a very long sequenc...
Digital signal processing. In Digital Signal Processing, the convolution and deconvolution with a v...
International audienceConvolution is an important operation in image processing applications, such a...
Abstract. Convolution is a very important operation within artificial vision. It can be characterize...
Two-dimensional (2-D) convolution is a widely used operation in image processing and computer vision...
Image convolution is a common algorithm that can be found in most graphics editors. It is used to fi...
The identification of moving objects is a basic step in computer vision. The identification begins w...
Historically, attaining high performance in image processing has always been a challenge since 1960s...
In this paper we propose a new algorithm for real-time filtering of video sequences corrupted by Poi...
The Digital Image Processing convolution is core block for Convolution Neural Networks (CNN) which i...