English

Image-based Automatic Dial Meter Reading in Unconstrained Scenarios

Computer Vision and Pattern Recognition 2022-10-25 v2

Abstract

The replacement of analog meters with smart meters is costly, laborious, and far from complete in developing countries. The Energy Company of Parana (Copel) (Brazil) performs more than 4 million meter readings (almost entirely of non-smart devices) per month, and we estimate that 850 thousand of them are from dial meters. Therefore, an image-based automatic reading system can reduce human errors, create a proof of reading, and enable the customers to perform the reading themselves through a mobile application. We propose novel approaches for Automatic Dial Meter Reading (ADMR) and introduce a new dataset for ADMR in unconstrained scenarios, called UFPR-ADMR-v2. Our best-performing method combines YOLOv4 with a novel regression approach (AngReg), and explores several postprocessing techniques. Compared to previous works, it decreased the Mean Absolute Error (MAE) from 1,343 to 129 and achieved a meter recognition rate (MRR) of 98.90% -- with an error tolerance of 1 Kilowatt-hour (kWh).

Cite

@article{arxiv.2201.02850,
  title  = {Image-based Automatic Dial Meter Reading in Unconstrained Scenarios},
  author = {Gabriel Salomon and Rayson Laroca and David Menotti},
  journal= {arXiv preprint arXiv:2201.02850},
  year   = {2022}
}
R2 v1 2026-06-24T08:43:42.327Z