DAMP-YOLO: A Lightweight Network Based on Deformable Features and Aggregation for Meter Reading Recognition

Author:

Zhuo Sichao12,Zhang Xiaoming12,Chen Ziyi12,Wei Wei12,Wang Fang12ORCID,Li Quanlong12,Guan Yufan12

Affiliation:

1. College of Information Engineering, Beijing Institute of Petrochemical Technology, Beijing 102617, China

2. Laboratory of Petroleum and Chemical Industry Process Control System Information Security Engineering, Beijing 102617, China

Abstract

With the development of Industry 4.0, although some smart meters have appeared on the market, traditional mechanical meters are still widely used due to their long-standing presence and the difficulty of modifying or replacing them in large quantities. Most meter readings are still manually taken on-site, and some are even taken in high-risk locations such as hazardous chemical storage. However, existing methods often fail to provide real-time detections or result in misreadings due to the complex nature of natural environments. Thus, we propose a lightweight network called DAMP-YOLO. It combines the deformable CSP bottleneck (DCB) module, aggregated triplet attention (ATA) mechanism, meter data augmentation (MDA), and network pruning (NP) with the YOLOv8 model. In the meter reading recognition dataset, the model parameters decreased by 30.64% while mAP50:95 rose from 87.92% to 88.82%, with a short inference time of 129.6 ms for the Jetson TX1 intelligent car. In the VOC dataset, our model demonstrated improved performance, with mAP50:95 increasing from 41.03% to 45.64%. The experimental results show that the proposed model is competitive for general object detection tasks and possesses exceptional feature extraction capabilities. Additionally, we have devised and implemented a pipeline on the Jetson TX1 intelligent vehicle, facilitating real-time meter reading recognition in situations where manual interventions are inconvenient and hazardous, thereby confirming its feasibility for practical applications.

Funder

2022 Scientific Research Project of Beijing Municipal Education Commission

2020 Scientific Research Project of Beijing Municipal Education Commission

National College Student Innovation and Entrepreneurship Training Program

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference49 articles.

1. Reasearch of meter digits recognition based on fuzzy theory;Duan;Instrum. Tech. Sens.,2004

2. Study on automatic identification method of digital tube;Shuang;Commun. Technol.,2012

3. Zhao, S., Li, B., Yuan, J., and Cui, G. (2005, January 18). Research on remote meter automatic reading based on computer vision. Proceedings of the 2005 IEEE/PES Transmission & Distribution Conference & Exposition: Asia and Pacific, Dalian, China.

4. Gas meter reading from real world images using a multi-net system;Vanetti;Pattern Recognit. Lett.,2013

5. A method for digital instrument character recognition based on template matching;Lu;Mod. Comput.,2008

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