Title :
An OCR System for Numerals Applied to Energy Meters
Author :
Alexandria, A.R. ; Cortez, P.C. ; Felix, J.H.S. ; Girão, A.M. ; Frota, J.B.B. ; Bessa, J.A.
Author_Institution :
Inst. Fed. de Educ., Cienc. e Tecnol. do Ceara (IFCE), Fortaleza, Brazil
Abstract :
This work describes a prototype of an OCR (Optical Character Recognition) system designed for reading digits of power measurement devices, using Artificial Neural Networks. The motivation for this work is the implementation of an alternative automatic measurement system to be used in a prepaid power system - SEPPRA. Prototype software using Computer Vision techniques and pattern recognition through Neural Networks is implemented in the C++/Windows platform. Considering this application, adaptive threshold methods are compared in order to choose the more appropriated algorithm of binarization. Several algorithms are implemented and evaluated under different conditions of zoom and camera focus. The system works satisfactorily and can be carried to other platforms, making possible its production in commercial scale.
Keywords :
computer vision; computerised instrumentation; measurement systems; neural nets; optical character recognition; power engineering computing; power meters; power system measurement; C++-Windows platform; OCR system; SEPPRA prepaid power system; adaptive threshold methods; artificial neural networks; automatic measurement system; binarization algorithm; camera focus; computer vision techniques; energy meters; numerals; optical character recognition system; pattern recognition; power measurement devices; prototype software; zoom conditions; Backpropagation; Hardware; Image segmentation; Optical character recognition software; RNA; Visualization; Computer Vision; Neural Networks; OCR; adaptative thresholding;
Journal_Title :
Latin America Transactions, IEEE (Revista IEEE America Latina)
DOI :
10.1109/TLA.2014.6893986