神经形态工程学
计算机科学
帧速率
实时计算
嵌入式系统
接口(物质)
计算机硬件
延迟(音频)
异步通信
人工智能
人工神经网络
计算机网络
电信
最大气泡压力法
气泡
并行计算
作者
Sizhen Bian,Lukas Schulthess,G Rutishauser,Alfio Di Mauro,Luca Benini,Michele Magno
标识
DOI:10.1109/iwasi58316.2023.10164354
摘要
The interest in dynamic vision sensor (DVS)powered unmanned aerial vehicles (UAV) is raising, especially due to the microsecond-level reaction time of the bio-inspired event sensor, which increases robustness and reduces latency of the perception tasks compared to a RGB camera. This work presents ColibriUAV, a UAV platform with both frame-based and event-based cameras interfaces for efficient perception and near-sensor processing. The proposed platform is designed around Kraken, a novel low-power RISC-V System on Chip with two hardware accelerators targeting spiking neural networks and deep ternary neural networks.Kraken is capable of efficiently processing both event data from a DVS camera and frame data from an RGB camera. A key feature of Kraken is its integrated, dedicated interface with a DVS camera. This paper benchmarks the end-to-end latency and power efficiency of the neuromorphic and event-based UAV subsystem, demonstrating state-of-the-art event data with a throughput of 7200 frames of events per second and a power consumption of 10.7 mW, which is over 6.6 times faster and a hundred times less power-consuming than the widely-used data reading approach through the USB interface. The overall sensing and processing power consumption is below 50 mW, achieving latency in the milliseconds range, making the platform suitable for low-latency autonomous nano-drones as well.
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