A Stream Hardware Architecture for Keypoint Matching Based on a Speculative Approach

Author(s):  
Maria Lepecq ◽  
Mehdi Darouich
2016 ◽  
Vol 12 (2) ◽  
pp. 188-197
Author(s):  
A yahoo.com ◽  
Aumalhuda Gani Abood aumalhuda ◽  
A comp ◽  
Dr. Mohammed A. Jodha ◽  
Dr. Majid A. Alwan

Author(s):  
Matheus Jahnke ◽  
Jones Goebel ◽  
Daniel Palomino ◽  
Guilherme Correa ◽  
Luciano Agostini ◽  
...  

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):  
Matheus B. R. Cardoso ◽  
Samuel S. da Silva ◽  
Lucas G. Nardo ◽  
Roberto M. Passos ◽  
Erivelton G. Nepomuceno ◽  
...  

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