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Low-Power License Plate Detection and Recognition on a RISC-V Multi-Core MCU-based Vision System

机译:基于RISC-V多核MCU的视觉系统的低功率车牌检测和识别

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In this paper, we present the first (to the best of our knowledge) demonstration of a low-power MCU-based edge device for Automatic License Plate Recognition (ALPR). The design leverages on a 9-core RISC-V processor, GAP8, coupled with a QVGA ultra-low-power greyscale imager. The proposed visual processing pipeline uses a multi-model inference approach based on SSDlite-MobilenetV2 for license plate detection and LPRNet for optical character recognition, reaching a 38.9% mAP score for the first task and a recognition rate of >99.13% for the latter on public datasets. On real-world data, the pipeline recognizes registration numbers when the size of LP crops is as small as 30×5 pixels. Thanks to the applied compression and optimization strategies, the multi-model inference (687 MMAC) achieves a throughput of 1.09 FPS at a power cost of 117 mW when running on GAP8. Our solution is the first MCU-class device embedding such a level of network complexity, resulting to be 73 × more energy-efficient w.r.t. precedent mobile-class ALPR system featuring a Raspberry Pi3. The proposed design does not resort to any hardwired acceleration engines, thus retaining full flexibility for future algorithmic improvements.
机译:在本文中,我们介绍了一种基于低功耗MCU的边缘设备的第一个(我们的知识)示范,用于自动车牌识别(ALPR)。设计利用9核RISC-V处理器,GAP8,与QVGA超低功耗灰度成像器相结合。所提出的视觉处理管道使用基于SSDLITE-MobileNetv2的多模型推理方法进行牌照检测和LPRNET,用于光学字符识别,达到第一个任务的38.9%地图分数,并且对于后者的识别率为> 99.13%的识别率公共数据集。在真实世界中,当LP作物的大小为30×5像素时,管道识别注册号。由于应用的压缩和优化策略,多模型推理(687 MMAC)在GAP8上运行时,在117 MW的功率成本实现1.09 FP的吞吐量。我们的解决方案是嵌入这种网络复杂程度的第一个MCU类设备,导致73倍更节能W.R.T.具有覆盆子PI3的先例移动类ALPR系统。所提出的设计并不借助任何硬连线加速发动机,从而保持对未来算法改进的全部灵活性。

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