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A Low-Power Deep Neural Network Online Learning Processor for Real-Time Object Tracking Application

机译:用于实时对象跟踪应用的低功耗深神经网络在线学习处理器

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摘要

A deep neural network (DNN) online learning processor is proposed with high throughput and low power consumption to achieve real-time object tracking in mobile devices. Four key features enable a low-power DNN online learning. First, a proposed processor is designed with a unified core architecture and it achieves 1.33x higher throughput than the previous state-of-the-art DNN learning processor. Second, the new algorithms, binary feedback alignment (BFA), and dynamic fixed-point based run-length compression (RLC), are proposed and reduce power consumption through the reduction of external memory accesses (EMA). The BFA and dynamic fixed-point-based RLC reduce the EMA by 11.4% and 32.5%, respectively. Third, the new data feeding units, including an integral RLC (iRLC) decoder and a transpose RLC (tRLC) decoder, are co-designed to maximize throughput alongside the proposed algorithms. Finally, a dropout controller in this processor reduces redundant power consumption coming from the unified core and the data feeding architecture by the proposed dynamic clock-gating scheme. This enables the proposed processor to operate DNN online learning with 38.1% lower power consumption. Implemented with 65 nm CMOS technology, the 3.52 mm(2) DNN online learning processor shows 126 mW power consumption and the processor achieves 30.4 frames-per-second throughput in the object tracking application.
机译:深度神经网络(DNN)在线学习处理器提出了高吞吐量和低功耗,以实现移动设备中的实时对象跟踪。四个关键功能使低功耗DNN在线学习。首先,建议的处理器采用统一的核心架构设计,它比以前的最先进的DNN学习处理器实现了1.33倍的吞吐量。其次,提出了新的算法,二进制反馈对准(BFA)和动态的固定点的运行长度压缩(RLC),并通过减少外部存储器访问(EMA)来降低功耗。 BFA和动态定点的RLC分别将EMA减少11.4%和32.5%。第三,包括积分RLC(IRLC)解码器和转置RLC(TRLC)解码器的新数据馈送单元被共同设计成最大化吞吐量与所提出的算法一起。最后,该处理器中的辍学控制器通过所提出的动态时钟门控方案降低来自统一核心和数据馈送架构的冗余功耗。这使得提出的处理器能够在线学习运行,较低功耗的38.1%。用65 nm CMOS技术实现,3.52 mm(2)DNN在线学习处理器显示126 MW功耗,处理器在对象跟踪应用程序中实现了30.4帧帧。

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