Visual Content Learning in a Cognitive Vision Platform for Hazard Control (CVP-HC)

Title
Visual Content Learning in a Cognitive Vision Platform for Hazard Control (CVP-HC)
Publication Date
2019
Author(s)
de Oliveira, Caterine Silva
Sanin, Cesar
( author )
OrcID: https://orcid.org/0000-0001-8515-417X
Email: cmaldon3@une.edu.au
UNE Id une-id:cmaldon3
Szczerbicki, Edward
Type of document
Journal Article
Language
en
Entity Type
Publication
Publisher
Taylor & Francis Inc
Place of publication
United States of America
DOI
10.1080/01969722.2019.1565116
UNE publication id
une:1959.11/61844
Abstract

This work is part of an effort for the development of a Cognitive Vision Platform for Hazard Control (CVP-HC) for applications in industrial workplaces, adaptable to a wide range of environments. The paper focuses on hazards resulted from the nonuse of personal protective equipment (PPE). Given the results of previous analysis of supervised techniques for the problem of classification of a few PPE (boots, hard hats, and gloves extracted from frames of low resolution videos), which found the Deep Learning (DL) methods as the most suitable ones to integrate our platform, the objective of this paper is to test two DL algorithms: Single Shot Detector (SSD) and Faster Region-based Convolutional Network (Faster R-CNN). The testing uses pretrained models on a second version of our PPE dataset (containing 11 classes of objects) and evaluates which of examined algorithms is more appropriate to compose our system reasoning.

Link
Citation
Cybernetics and Systems, 50(2), p. 197-207
ISSN
1087-6553
0196-9722
Start page
197
End page
207

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