Román-Gallego Jesús-Ángel, Pérez-Delgado María-Luisa, Conde Miguel A, Viñuela Marcos Luengo
Escuela Politécnica Superior de Zamora, Universidad de Salamanca, Avda, Requejo, Zamora, Spain.
Front Public Health. 2024 Nov 27;12:1431757. doi: 10.3389/fpubh.2024.1431757. eCollection 2024.
The field of image recognition is extensively researched, with applications addressing numerous challenges posed by the scientific community. Notably among these challenges are those related to individual safety. This article presents a system designed for the application of image recognition in the realm of Occupational Risk Prevention-a concern of paramount importance due to the imperative of preventing workplace accidents as falls, collisions, or other types of accidents for the benefit of both workers and enterprises. In this study, convolutional neural networks are employed due to their exceptional efficacy in image recognition. Leveraging this technology, the focus is on the recognition of safety signs used in Occupational Risk Prevention. The primary objective is to enable the recognition of these signs regardless of their orientation or potential degradation, phenomena commonly observed due to regular exposure to environmental elements or deliberate defacement. The results of this research substantiate the feasibility of integrating this technology into devices capable of promptly alerting individuals to potential risks. However, to improve classification capabilities, especially for highly degraded or complex images, a larger and more diverse data set might be needed, including real-world images that introduce greater entropy and variability. Implementing such a system would provide workers and companies with a proactive measure against workplace accidents, thereby enhancing overall safety in occupational environments.
图像识别领域得到了广泛研究,其应用解决了科学界提出的众多挑战。其中特别突出的挑战是与个人安全相关的挑战。本文介绍了一种为图像识别在职业风险预防领域的应用而设计的系统——由于预防诸如跌倒、碰撞或其他类型事故等工作场所事故对工人和企业都至关重要,职业风险预防是一个至关重要的问题。在本研究中,由于卷积神经网络在图像识别方面具有卓越的功效,因此被采用。利用这项技术,重点在于识别职业风险预防中使用的安全标志。主要目标是能够识别这些标志,无论其方向如何或可能出现的退化情况,这些现象因经常暴露于环境因素或故意破坏而常见。本研究结果证实了将该技术集成到能够及时提醒个人潜在风险的设备中的可行性。然而,为了提高分类能力,特别是对于高度退化或复杂的图像,可能需要更大、更多样化的数据集,包括引入更大熵和变异性的真实世界图像。实施这样一个系统将为工人和公司提供针对工作场所事故的积极措施,从而提高职业环境中的整体安全性。