A FPGA-Based Hardware Architecture Approach for Real-Time Fuzzy Edge Detection

Author(s):  
Emanuel Ontiveros-Robles ◽  
José González Vázquez ◽  
Juan R. Castro ◽  
Oscar Castillo
2013 ◽  
Vol 2013 ◽  
pp. 1-6 ◽  
Author(s):  
Sanjay Singh ◽  
Anil Kumar Saini ◽  
Ravi Saini ◽  
A. S. Mandal ◽  
Chandra Shekhar ◽  
...  

This paper presents a new FPGA resource optimized hardware architecture for real-time edge detection using the Sobel compass operator. The architecture uses a single processing element to compute the gradient for all directions. This greatly economizes on the FPGA resources' usages (more than 40% reduction) while maintaining real-time video frame rates. The measured performance of the architecture is 50 fps for standard PAL size video and 200 fps for CIF size video. The use of pipelining further improved the performance (185 fps for PAL size video and 740 fps for CIF size video) without significant increase in FPGA resources.


Author(s):  
Parastoo Soleimani ◽  
David W. Capson ◽  
Kin Fun Li

AbstractThe first step in a scale invariant image matching system is scale space generation. Nonlinear scale space generation algorithms such as AKAZE, reduce noise and distortion in different scales while retaining the borders and key-points of the image. An FPGA-based hardware architecture for AKAZE nonlinear scale space generation is proposed to speed up this algorithm for real-time applications. The three contributions of this work are (1) mapping the two passes of the AKAZE algorithm onto a hardware architecture that realizes parallel processing of multiple sections, (2) multi-scale line buffers which can be used for different scales, and (3) a time-sharing mechanism in the memory management unit to process multiple sections of the image in parallel. We propose a time-sharing mechanism for memory management to prevent artifacts as a result of separating the process of image partitioning. We also use approximations in the algorithm to make hardware implementation more efficient while maintaining the repeatability of the detection. A frame rate of 304 frames per second for a $$1280 \times 768$$ 1280 × 768 image resolution is achieved which is favorably faster in comparison with other work.


Author(s):  
Dong Li ◽  
Xiao Pan ◽  
Zhenzhou Fu ◽  
Luonan Chang ◽  
Guangjun Zhang

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