A High Performance Parallel Computing Architecture For Robust Image Features

INTERNATIONAL JOURNAL OF ELECTRONICS(2014)

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摘要
A design of parallel architecture for image feature detection and description is proposed in this article. The major component of this architecture is a 2D cellular network composed of simple reprogrammable processors, enabling the Hessian Blob Detector and Haar Response Calculation, which are the most computing-intensive stage of the Speeded Up Robust Features (SURF) algorithm. Combining this 2D cellular network and dedicated hardware for SURF descriptors, this architecture achieves real-time image feature detection with minimal software in the host processor. A prototype FPGA implementation of the proposed architecture achieves 1318.9 GOPS general pixel processing @ 100 MHz clock and achieves up to 118 fps in VGA (640 �� 480) image feature detection. The proposed architecture is stand-alone and scalable so it is easy to be migrated into VLSI implementation. ? 2013 Taylor & Francis.
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关键词
computer vision hardware,parallel computing,speeded up robust features
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