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A High-Speed Low-Cost VLSI System Capable of On-Chip Online Learning for Dynamic Vision Sensor Data Classification

机译:一种高速低成本VLSI系统能够用于动态视觉传感器数据分类的片上在线学习

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摘要

This paper proposes a high-speed low-cost VLSI system capable of on-chip online learning for classifying address-event representation (AER) streams from dynamic vision sensor (DVS) retina chips. The proposed system executes a lightweight statistic algorithm based on simple binary features extracted from AER streams and a Random Ferns classifier to classify these features. The proposed system’s characteristics of multi-level pipelines and parallel processing circuits achieves a high throughput up to 1 spike event per clock cycle for AER data processing. Thanks to the nature of the lightweight algorithm, our hardware system is realized in a low-cost memory-centric paradigm. In addition, the system is capable of on-chip online learning to flexibly adapt to different in-situ application scenarios. The extra overheads for on-chip learning in terms of time and resource consumption are quite low, as the training procedure of the Random Ferns is quite simple, requiring few auxiliary learning circuits. An FPGA prototype of the proposed VLSI system was implemented with 9.5~96.7% memory consumption and <11% computational and logic resources on a Xilinx Zynq-7045 chip platform. It was running at a clock frequency of 100 MHz and achieved a peak processing throughput up to 100 Meps (Mega events per second), with an estimated power consumption of 690 mW leading to a high energy efficiency of 145 Meps/W or 145 event/μJ. We tested the prototype system on MNIST-DVS, Poker-DVS, and Posture-DVS datasets, and obtained classification accuracies of 77.9%, 99.4% and 99.3%, respectively. Compared to prior works, our VLSI system achieves higher processing speeds, higher computing efficiency, comparable accuracy, and lower resource costs.
机译:本文提出了一种能够进行芯片在线学习的高速低成本VLSI系统,用于从动态视觉传感器(DVS)视网膜芯片中分类地址事件表示(AER)流。所提出的系统执行基于从AER流中提取的简单二进制特征的轻量级统计算法和随机蕨类分类器来对这些功能进行分类。所提出的系统的多级流水线和并行处理电路的特性实现了每个时钟周期的高吞吐量,用于AER数据处理。由于轻质算法的性质,我们的硬件系统以低成本的内存为中心的范例实现。此外,该系统能够在线在线学习,灵活地适应不同的原位应用方案。在时间和资源消耗方面的片上学习的额外开销非常低,因为随机蕨类植物的培训过程非常简单,需要很少的辅助学习电路。所提出的VLSI系统的FPGA原型以9.5〜96.7%的内存消耗和Xilinx Zynq-7045芯片平台的存储器消耗和<11%的计算和逻辑资源实施。它以100MHz的时钟频率运行,实现了高达100 MEPS(每秒Mega事件的峰值处理峰值,估计功耗为690兆瓦,导致高能量效率为145 MEPS / W或145事件/ μj。我们在MNIST-DVS,Poker-DVS和Posture-DVS数据集上测试了原型系统,并分别获得了77.9%,99.4%和99.3%的分类精度。与现有作品相比,我们的VLSI系统达到了更高的处理速度,更高的计算效率,可比性,较低的资源成本。

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