Bio-inspired system architecture for energy efficient, BIGDATA computing with application to wide area motion imagery

2016 IEEE 7th Latin American Symposium on Circuits & Systems (LASCAS)(2016)

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摘要
In this paper we discuss a brain-inspired system architecture for real-time big velocity BIGDATA processing that originates in large format tiled imaging arrays used in wide area motion imagery ubiquitous surveillance. High performance and high throughput is achieved through approximate computing and fixed point arithmetic in a variable precision (6 bits to 18 bits) architecture. The architecture implements a variety of processing algorithms classes ranging from convolutional networks (Con-vNets) to linear and non-linear morphological processing, probabilistic inference using exact and approximate Bayesian methods and ConvNet based classification. The processing pipeline is implemented entirely using event based neuromorphic and stochastic computational primitives. The system is capable of processing in real-time 160 × 120 raw pixel data running on a reconfigurable computing platform (5 Xilinx Kintex-7 FPGAs). The reconfigurable computing implementation was developed to emulate the computational structures for a 3D System on Chip (3D-SOC) that will be fabricated in the 55nm CMOS technology and it has a dual goal: (i) algorithm exploration and (ii) architecture exploration.
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关键词
bio-inspired system architecture,energy efficiency,BIGDATA computing,brain-inspired system architecture,real-time big velocity BIGDATA processing,wide area motion imagery ubiquitous surveillance,approximate computing,fixed point arithmetic,convolutional networks,nonlinear morphological processing,probabilistic inference,Bayesian methods,ConvNet based classification,event based neuromorphic computational primitives,stochastic computational primitives,reconfigurable computing platform,3D system on chip,3D-SoC,algorithm exploration,architecture exploration,linear morphological processing,variable precision architecture,processing pipeline architecture
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