英文摘要 |
Covid-19 has been threatening human life and is now the most serious public health issue in the world. During this pandemic, wearing masks is one of the most effective ways to inhibit virus transmission. However, existing ubiquitous identity recognition requires people to remove their masks to complete facial recognition, which is highly risky. Iris recognition, as a safer applicable identification method, has its fatal weakness of not being able to achieve satisfactory real-time recognition on end devices. This paper presents an edge deployment of a low-power iris recognition system based on FPGA with approximate multipliers. We adopted a serial-parallel hybrid method for the preprocessing stage, trained the CNN model on PC and then deployed the architecture and parameters on FPGA. We further reduced power and resource consumption by designing approximate multipliers for the key calculation. Experimental results show that design achieves up 28% and 43% gain in terms of area and latency energy product, while incurring a negligible accuracy loss. The recognition speed increased by 40% compared with Raspberry Pi, 11 times better than Jetson Nano power latency production. |