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A generalized framework for recognition of expiration dates on product packages using fully convolutional networks

Ahmet Cagatay Seker, Sang Chul Ahn

2022Expert Systems with Applications19 citationsDOIOpen Access PDF

Abstract

It is important to understand the expiration date. However, it is challenging for machines to understand it. Most previous methods recognize expiration dates in limited conditions. To address this problem, a generalized framework for detecting and understanding expiration dates has been proposed. This framework handles challenging cases and distinguishes 13 different date formats. Unlike previous methods, a neural network-based date parser is adopted in the framework to understand the meaning of an expiration date by identifying the day, month, and year. The experimental results demonstrate the proposed framework achieves 97.74% recognition accuracy for expiration dates in various formats and challenging cases. Since there is no publicly available dataset of expiration dates, a novel dataset collection named ExpDate was created and opened.

Topics & Concepts

ExpirationComputer scienceConvolutional neural networkExpiration dateArtificial intelligenceProduct (mathematics)Machine learningPattern recognition (psychology)MathematicsMedicineRespiratory systemInternal medicineGeometryChemistryFood scienceHandwritten Text Recognition TechniquesMusic and Audio ProcessingVehicle License Plate Recognition