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Distributed and Self-organizing Systems
Distributed and Self-organizing Systems

PUBLICATION

Enhancement of Ai-based Implementation Using a One-stage Detector Algorithm for the Detection of Counterfeit Products

Type

Conference Paper

Year

2022

Authors

daoud

Nabil Khalil

Nabil Khalil

gaedke

Research Area

Intelligent Information Management

Event

International Conferences e-Society 2022 and Mobile Learning 2022

Published in

Online/Virtual

ISBN/ISSN

978-989-8704-38-2

Download

Full Paper

Abstract

Counterfeit products are a major problem that the market has been facing for a long time. According to the Global Brand Counterfeiting Report 2018 "Amount of Total Counterfeiting, globally has reached to 1.2 Trillion USD in 2017 and is Bound to Reach 1.82 Trillion USD by the Year 2020", a solution to this concern has already been researched and published by the authors in previous research papers published in e-society 2020 and IADIS journal, but the issue with the previously mentioned solution was that the object detection performance and accuracy needed to be improved. In this paper, a comparison between the current YOLO (You Only Look Once) algorithm used in the new implementation and the SSD (Single Shot Detector) algorithm, the faster R-CNN (Region-Based Convolutional Neural Networks) used in the old implementation, is made in the context of the present task to discuss and prove why YOLO is a more suitable option for the counterfeit product detection task.

Reference

Daoud, Eduard; Khalil, Nabil; Gaedke, Martin: Enhancement of Ai-based Implementation Using a One-stage Detector Algorithm for the Detection of Counterfeit Products. Online/Virtual , pp. 107-114, 2022.



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