Authors: Yi Li,Qi Wei,Fei Qiao,Huazhong Yang
ArXiv: 1408.2289
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Abstract URL: http://arxiv.org/abs/1408.2289v1
Physical computing is a technology utilizing the nature of electronic devices
and circuit topology to cope with computing tasks. In this paper, we propose an
active circuit network to implement multi-scale Gaussian filter, which is also
called Gaussian Pyramid in image preprocessing. Various kinds of methods have
been tried to accelerate the key stage in image feature extracting algorithm
these years. Compared with existing technologies, GPU parallel computing and
FPGA accelerating technology, physical computing has great advantage on
processing speed as well as power consumption. We have verified that processing
time to implement the Gaussian pyramid of the SIFT algorithm stands on
nanosecond level through the physical computing technology, while other
existing methods all need at least hundreds of millisecond. With an estimate on
the stray capacitance of the circuit, the power consumption is around 670pJ to
filter a 256x256 image. To the best of our knowledge, this is the most fast
processing technology to accelerate the SIFT algorithm, and it is also a rather
energy-efficient method, thanks to the proposed physical computing technology.