A Cost-Effective Automatic Dial Meter Reader Using a Lightweight Convolutional Neural Network

Cheng-Hung Lin, Kuan-Yi Kuo
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引用次数: 1

Abstract

With the vigorous development of the Internet of Things technology, the government has gradually phased out the traditional meter and began the era of smart meters. However, the replacement of smart meters is expensive and the yield is too low, which has led to the slow deployment of smart meters. Our idea is to develop a low-cost alternative solution that uses an edge device with a camera to automatically identify traditional electric dial meters, and then uploads the identified value to cloud servers. In the past, there have been studies to automatically read dial meters through traditional image segmentation methods. However, because traditional electric meters are mostly set in an environment with high concealment, dim light, and dirt, it is difficult for traditional methods to obtain good identification results for unclear meter images. In this paper, we propose a cost-effective automatic dial meter reader with a lightweight convolutional neural network on edge devices. In order to easily deploy and improve the accuracy of dial meter recognition, the proposed meter reader has the ability to automatically adjust tilt meter images. Experimental results show that the proposed lightweight convolutional neural network achieves significant improvements in segmentation errors, false positives, and elapsed time compared with the relative approaches.
使用轻量级卷积神经网络的成本效益高的自动表盘读取器
随着物联网技术的蓬勃发展,政府逐渐淘汰了传统电表,开始了智能电表的时代。然而,智能电表的更换成本高,收益率太低,导致智能电表部署缓慢。我们的想法是开发一种低成本的替代解决方案,使用带有摄像头的边缘设备自动识别传统的电动表盘表,然后将识别的值上传到云服务器。过去已有研究通过传统的图像分割方法实现表盘仪表的自动读取。然而,由于传统电表多设置在隐蔽性高、光线昏暗、脏污的环境中,对于电表图像不清晰的情况,传统方法难以获得良好的识别结果。在本文中,我们提出了一种在边缘设备上使用轻量级卷积神经网络的具有成本效益的自动表盘读取器。为了方便部署和提高表盘识别的精度,本文提出的抄表器具有自动调整倾斜仪表图像的能力。实验结果表明,与相关方法相比,轻量级卷积神经网络在分割误差、误报和运行时间方面取得了显著改善。
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