Learning accurate personal protective equipment detection from virtual worlds

Deep learning has achieved impressive results in many machine learning tasks such as image recognition and computer vision. Its applicability to supervised problems is however constrained by the availability of high-quality training data consisting of large numbers of humans annotated examples (e.g....

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Veröffentlicht in:Multimedia tools and applications 2021-06, Vol.80 (15), p.23241-23253
Hauptverfasser: Di Benedetto, Marco, Carrara, Fabio, Meloni, Enrico, Amato, Giuseppe, Falchi, Fabrizio, Gennaro, Claudio
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container_end_page 23253
container_issue 15
container_start_page 23241
container_title Multimedia tools and applications
container_volume 80
creator Di Benedetto, Marco
Carrara, Fabio
Meloni, Enrico
Amato, Giuseppe
Falchi, Fabrizio
Gennaro, Claudio
description Deep learning has achieved impressive results in many machine learning tasks such as image recognition and computer vision. Its applicability to supervised problems is however constrained by the availability of high-quality training data consisting of large numbers of humans annotated examples (e.g. millions). To overcome this problem, recently, the AI world is increasingly exploiting artificially generated images or video sequences using realistic photo rendering engines such as those used in entertainment applications. In this way, large sets of training images can be easily created to train deep learning algorithms. In this paper, we generated photo-realistic synthetic image sets to train deep learning models to recognize the correct use of personal safety equipment (e.g., worker safety helmets, high visibility vests, ear protection devices) during at-risk work activities. Then, we performed the adaptation of the domain to real-world images using a very small set of real-world images. We demonstrated that training with the synthetic training set generated and the use of the domain adaptation phase is an effective solution for applications where no training set is available.
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subjects Adaptation
Algorithms
Cognitive tasks
Computer Communication Networks
Computer Science
Computer vision
Data Structures and Information Theory
Deep learning
Domains
Ear protection
Machine learning
Multimedia Information Systems
Object recognition
Occupational safety
Safety equipment
Safety helmets
Special Purpose and Application-Based Systems
Training
Visibility
title Learning accurate personal protective equipment detection from virtual worlds
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