研究目的
To introduce Minitaur, an event-driven neural network accelerator designed for low power and high performance, capable of integrating into existing robotics or offloading computationally expensive neural network tasks from the CPU.
研究成果
Minitaur, an event-driven FPGA-based spiking network accelerator, achieves 18.73 million PSCs/second with just 1.5 W of power, making it suitable for embedded robotics applications. It records 92% accuracy on the MNIST handwritten digit classification and 71% accuracy on the 20 newsgroups classification data set. The system is robust to noise and allows for trading off between accuracy and latency.
研究不足
The current design has a benchmarked USB-to-USB latency of 236 μs, primarily dominated by the operating system's USB read and writes latency. The system's performance is limited by memory bandwidth and the precision of weight representations.