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Heterogeneous computing with hardware accelerators is a promising direction to overcome the power and performance walls in traditional computing systems. CPU-accelerator integrated architectures, such as CPU with ASIC or FPGA based accelerators, are able to provide customized processing according to application requirements and are thus particularly attractive to speed up computation-intensive applications...
Heterogeneous Computing is a promising direction to address the challenges of performance and power walls in high-performance computing, where CPU-FPGA architectures are particularly promising for application acceleration. However, the development of such architectures associated with optimal memory hierarchies is challenging due to the absence of an integrated simulator to support full system simulation...
Heterogeneous computing is rapidly gaining increased attention due to the promise it holds in overcoming power and performance walls in traditional computing systems. With its focus on customized processing nodes dedicated to the different tasks in an application, it is hoped that these walls will be overcome. Therefore, CPU-FPGA co-architectures are also gaining ground in application areas like recognition,...
Image edge detection is a fundamental process in computer vision. Image edges represent the major fraction of information in an image. Traditional edge-detection techniques focus on the gradient calculation method. In this paper, for the first time, the statistical pattern recognition method is used to detect the edge after the real-time image was processed via the median filtering method and implemented...
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