Shen Jianguo, Xia Yu, Ding Hao, Cabrel Wen
College of Physics and Electronic Information Engineering, Zhejiang Normal University, Jinhua 321000, China.
Sensors (Basel). 2023 Oct 19;23(20):8572. doi: 10.3390/s23208572.
Due to the rapid increase in private car ownership in China, most cities face the problem of insufficient parking spaces, leading to frequent occurrences of parking space conflicts. There is a wide variety of parking locks available on the market. However, most of them lack advanced intelligence and cannot cater to the growing diverse needs of people. The present study attempts to devise a smart parking lock to tackle this issue. Specifically, the smart parking lock uses a Raspberry Pi as the core controller, senses the vehicle with an ultrasonic ranging module, and collects the license plate image with a camera. In addition, algorithms for license plate recognition based on traditional image-processing methods typically require a high pixel resolution, but their recognition accuracy is often low. Therefore, we propose a new algorithm called UNET-GWO-SVM to achieve higher accuracy in embedded systems. Moreover, we developed a WeChat mini program to control the smart parking lock. Field tests were conducted on campus to evaluate the performance of the parking locks. The test results show that the corresponding effective unlocking rate is 99.0% when the recognition error is less than two license plate characters. The average time consumption is controlled at about 2 s. It can meet real-time requirements.
由于中国私家车保有量的迅速增长,大多数城市面临停车位不足的问题,导致停车位冲突频繁发生。市场上有各种各样的停车锁。然而,它们中的大多数缺乏先进的智能,无法满足人们日益多样化的需求。本研究试图设计一种智能停车锁来解决这个问题。具体来说,智能停车锁以树莓派作为核心控制器,用超声波测距模块感知车辆,并用摄像头采集车牌图像。此外,基于传统图像处理方法的车牌识别算法通常需要高像素分辨率,但识别准确率往往较低。因此,我们提出了一种名为UNET-GWO-SVM的新算法,以在嵌入式系统中实现更高的准确率。此外,我们开发了一个微信小程序来控制智能停车锁。在校园内进行了现场测试,以评估停车锁的性能。测试结果表明,当识别误差小于两个车牌字符时,相应的有效解锁率为99.0%。平均耗时控制在2秒左右。它可以满足实时要求。