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A hardware architecture for accelerating neuromorphic vision algorithms

机译:用于加速神经形态视觉算法的硬件架构

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Neuromorphic vision algorithms are biologically inspired algorithms that follow the processing that takes place in the visual cortex. These algorithms have proved to match classical computer vision algorithms in classification performance and even outperformed them in some instances. However, neuromorphic algorithms suffer from high complexity leading to poor execution times when running on general purpose processors, making them less attractive for real-time applications. FPGAs, on the other hand, have become true signal processing platforms due to their lightweight, low power consumption and massive parallel computational resources. This paper describes an FPGA-based hardware architecture that accelerates an object classification cortical model, HMAX. Compared to a CPU implementation, this hardware accelerator offers 23X (89X) speedup when mapped to a single-FPGA (multi-FPGA) platform, while maintaining a classification accuracy of 92.5%.
机译:神经形态视觉算法是生物启发算法,其遵循在视觉皮层中发生的处理。这些算法证明,在某些情况下匹配分类性能中的经典计算机视觉算法,甚至优于它们。然而,神经形态算法遭受高度复杂性,导致在通用处理器上运行时的执行时间差,使它们对实时应用的吸引力较低。另一方面,FPGA由于其轻量级,低功耗和大规模的并行计算资源而成为真实的信号处理平台。本文介绍了一种基于FPGA的硬件架构,可加速对象分类皮质模型HMAX。与CPU实现相比,该硬件加速器在映射到单个FPGA(多FPGA)平台时提供23x(89倍)加速,同时保持92.5%的分类精度。

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