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1.2-mW Online Learning Mixed-Mode Intelligent Inference Engine for Low-Power Real-Time Object Recognition Processor

机译:用于低功耗实时对象识别处理器的1.2mW在线学习混合模式智能推理引擎

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摘要

Object recognition is computationally intensive and it is challenging to meet 30-f/s real-time processing demands under sub-watt low-power constraints of mobile platforms even for heterogeneous many-core architecture. In this paper, an intelligent inference engine (IIE) is proposed as a hardware controller for a many-core processor to satisfy the requirements of low-power real-time object recognition. The IIE exploits learning and inference capabilities of the neurofuzzy system by adopting the versatile adaptive neurofuzzy inference system (VANFIS) with the proposed hardware-oriented learning algorithm. Using the programmable VANFIS, the IIE can configure its hardware topology adaptively for different target classifications. Its architecture contains analog/digital mixed-mode neurofuzzy circuits for updating online parameters to increase attention efficiency of object recognition process. It is implemented in 0.13-$mu{rm m}$ CMOS process and achieves 1.2-mW power consumption with 94% average classification accuracy within 1-$mu{rm s}$ operation delay. The 0.765-${rm mm}^{2}$ IIE achieves 76% attention efficiency and reduces power and processing delay of the 50-${rm mm}^{2}$ image processor by up to 37% and 28%, respectively, when 96% recognition accuracy is achieved.
机译:对象识别是计算密集型的,即使在异构多核体系结构下,要在移动平台的亚瓦低功耗约束下满足30-f / s的实时处理要求也是一项挑战。本文提出了一种智能推理引擎(IIE)作为多核处理器的硬件控制器,以满足低功耗实时目标识别的需求。 IIE通过采用通用的自适应神经模糊推理系统(VANFIS)和所提出的面向硬件的学习算法来利用神经模糊系统的学习和推理能力。通过使用可编程VANFIS,IIE可以针对不同的目标类别自适应地配置其硬件拓扑。它的体系结构包含模拟/数字混合模式神经模糊电路,用于更新在线参数以提高目标识别过程的注意力效率。它以0.13-μmCMOS工艺实现,在1.2μW的操作延迟内实现了1.2mW的功耗和94%的平均分类精度。 0.765-$ {rm mm} ^ {2} $ IIE可实现76%的注意力效率,并将50-$ {rm mm} ^ {2} $图像处理器的功耗和处理延迟降低多达37%和28%,当达到96%的识别精度时。

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