System-On-Chip for Biologically Inspired Vision Applications
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概要
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Neuromorphic vision algorithms are biologically-inspired computational models of the primate visual pathway. They promise robustness, high accuracy, and high energy efficiency in advanced image processing applications. Despite these potential benefits, the realization of neuromorphic algorithms typically exhibit low performance even when executed on multi-core CPU and GPU platforms. This is due to the disparity in the computational modalities prominent in these algorithms and those modalities most exploited in contemporary computer architectures. In essence, acceleration of neuromorphic algorithms requires adherence to specific computational and communicational requirements. This paper discusses these requirements and proposes a framework for mapping neuromorphic vision applications on a System-on-Chip, SoC. A neuromorphic object detection and recognition on a multi-FPGA platform is presented with performance and power efficiency comparisons to CMP and GPU implementations.
著者
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Narayanan Vijaykrishnan
Computer Science and Engineering, Pennsylvania State University
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Park Sungho
Computer Science and Engineering, Pennsylvania State University
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Maashri Ahmed
Computer Science and Engineering, Pennsylvania State University
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Irick Kevin
Computer Science and Engineering, Pennsylvania State University
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Chandrashekhar Aarti
Computer Science and Engineering, Pennsylvania State University
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Cotter Matthew
Computer Science and Engineering, Pennsylvania State University
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Chandramoorthy Nandhini
Computer Science and Engineering, Pennsylvania State University
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Debole Michael
Computer Science and Engineering, Pennsylvania State University