A Hardware Architecture for Image Clustering Using Spiking Neural Networks

VLSI(2012)

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摘要
Spiking Neural Networks (SNNs) have become an important research theme due to new discoveries and advances in neurophysiology, which states that information among neurons is interchanged via pulses or spikes. FPGAs are widely used for implementing high performance digital hardware systems, due to its flexibility and because they are suitable for the implementation of systems with high degree of parallelism. FPGAs have become an important tool because fine grain digital elements useful for efficient hardware implementation of SNNs are provided, making FPGA device suitable for implementing SNNs. SNNs are less hardware greedy, and the nature of the pulsed processing is well suited to the digital processing blocks of the FPGA devices. Several computer vision applications have been implemented using SNNs. One of the most critical tasks in computer vision is image clustering. In this paper, a hardware architecture for implementing image clustering using SNNs is reported. Results and performance statistics are provided.
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关键词
spiking neural networks,high degree,digital hardware system,efficient hardware implementation,computer vision,digital processing block,digital element,high performance,computer vision application,fpga device,hardware architecture,neural nets,field programmable gate arrays,fpga,hardware accelerator
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