Отрывок: A better performance is given by this asynchronous implementa- tion compared to the basic one. The following algorithms (4 and 5) illustrate the two sub-kernels procedures. Algorithm 4: Thinning_kernel_A Input: the variance image (V), and its width N Output: the edge image (E) 1: i ← (blockIdx.x + threadIdx.x × gridDim.x) × N; 2: for k ← 0 to (N – 2) do // sweep the...
Название : GPU acceleration of edge detection algorithm based on local variance and integral image: application to air bubbles boundaries extraction
Авторы/Редакторы : Bettaieb, Afef
Filali, Nabila
Filali, Taoufik
Aissia, Habib Ben
Ключевые слова : GPU
sedge detection; air bubble
digital image processing
real-time
CUDA
Дата публикации : Июн-2019
Издательство : Самарский национальный исследовательский университет им. академика С.П. Королева, Институт систем обработки изображений РАН - филиал ФНИЦ «Кристаллография и фотоника» РАН
Библиографическое описание : Bettaieb A, Filali N, Filali T, Ben Aissia H. GPU acceleration of edge detection algorithm based on local variance and integral image: application to air bubbles boundaries extraction. Computer Optics 2019; 43(3): 446-454. DOI: 10.18287/2412-6179-2019-43-3-446-454.
Серия/номер : 43;3
Аннотация : Accurate detection of air bubbles boundaries is of crucial importance in determining the performance and in the study of various gas/liquid two-phase flow systems. The main goal of this Accurate detection of air bubbles boundaries is of crucial importance in determining the performance and in the study of various gas/liquid two-phase flow systems. The main goal of this Accurate detection of air bubbles boundaries is of crucial importance in determining the performance and in the study of various gas/liquid two-phase flow systems. The main goal of this work is edge extraction of air bubbles rising in two-phase flow in real-time. To accomplish this, a fast algorithm based on local variance is improved and accelerated on the GPU to detect bubble contour. The proposed method is robust against changes of intensity contrast of edges and capable of giving high detection responses on low contrast edges. This algorithm is performed in two steps: in the first step, the local variance of each pixel is computed based on integral image, and then the resulting contours are thinned to generate the final edge map. We have implemented our algorithm on an NVIDIA GTX 780 GPU. The parallel implementation of our algorithm gives a speedup factor equal to 17x for high resolution images (1024×1024 pixels) compared to the serial implementation. Also, quantitative and qualitative assessments of our algorithm versus the most common edge detection algorithms from the literature were performed. A remarkable performance in terms of results accuracy and computation time is achieved with our algorithm. work is edge extraction of air bubbles rising in two-phase flow in real-time. To accomplish this, a fast algorithm based on local variance is improved and accelerated on the GPU to detect bubble contour. The proposed method is robust against changes of intensity contrast of edges and capable of giving high detection responses on low contrast edges. This algorithm is performed in two steps: in the first step, the local variance of each pixel is computed based on integral image, and then the resulting contours are thinned to generate the final edge map. We have implemented our algorithm on an NVIDIA GTX 780 GPU. The parallel implementation of our algorithm gives a speedup factor equal to 17x for high resolution images (1024×1024 pixels) compared to the serial implementation. Also, quantitative and qualitative assessments of our algorithm versus the most common edge detection algorithms from the literature were performed. A remarkable performance in terms of results accuracy and computation time is achieved with our algorithm. work is edge extraction of air bubbles rising in two-phase flow in real-time. To accomplish this, a fast algorithm based on local variance is improved and accelerated on the GPU to detect bubble contour. The proposed method is robust against changes of intensity contrast of edges and capable of giving high detection responses on low contrast edges. This algorithm is performed in two steps: in the first step, the local variance of each pixel is computed based on integral image, and then the resulting contours are thinned to generate the final edge map. We have implemented our algorithm on an NVIDIA GTX 780 GPU. The parallel implementation of our algorithm gives a speedup factor equal to 17x for high resolution images (1024×1024 pixels) compared to the serial implementation. Also, quantitative and qualitative assessments of our algorithm versus the most common edge detection algorithms from the literature were performed. A remarkable performance in terms of results accuracy and computation time is achieved with our algorithm.
URI (Унифицированный идентификатор ресурса) : https://dx.doi.org/10.18287/2412-6179-2019-43-3-446-454
http://repo.ssau.ru/handle/Zhurnal-Komputernaya-optika/GPU-acceleration-of-edge-detection-algorithm-based-on-local-variance-and-integral-image-application-to-air-bubbles-boundaries-extraction-78025
Другие идентификаторы : Dspace\SGAU\20190718\78025
Располагается в коллекциях: Журнал "Компьютерная оптика"

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