Mechanical strength recognition and classification of thermal protective fabric images after thermal aging based on deep learning.

IF 1.6 4区 医学 Q3 ERGONOMICS
Xiaohan Liu, Miao Tian, Yunyi Wang
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引用次数: 0

Abstract

Objectives. Currently, numerous studies have focused on testing or modeling to evaluate the safe service life of thermal protective clothing after thermal aging, reducing the risk to occupational personnel. However, testing will render the garment unsuitable for subsequent use and a series of input parameters for modeling are not readily available. In this study, a novel image recognition strategy was proposed to discriminate the mechanical strength of thermal protective fabric after thermal aging based on transfer learning. Methods. Data augmentation was used to overcome the shortcoming of insufficient training samples. Four pre-trained models were used to explore their performance in three sample classification modes. Results. The experimental results show that the VGG-19 model achieves the best performance in the three-classification mode (accuracy = 91%). The model was more accurate in identifying fabric samples in the early and late stages of strength decline. For fabric samples in the middle stage of strength decline, the three-classification mode was better than the four-classification and six-classification modes. Conclusions. The findings provide novel insights into the image-based mechanical strength evaluation of thermal protective fabrics after aging.

基于深度学习的热防护织物图像热老化后的机械强度识别与分类。
目的。目前,许多研究都侧重于测试或建模,以评估热防护服热老化后的安全使用寿命,从而降低对职业人员的风险。然而,测试会导致服装不适合后续使用,而且建模所需的一系列输入参数也不是现成的。本研究提出了一种基于迁移学习的新型图像识别策略,用于判别热防护服热老化后的机械强度。方法。使用数据增强来克服训练样本不足的缺点。使用四个预先训练好的模型来探索它们在三种样本分类模式下的性能。结果实验结果表明,VGG-19 模型在三种分类模式中表现最佳(准确率 = 91%)。该模型在识别早期和晚期强度下降阶段的织物样本时更为准确。对于处于强度下降中期的织物样本,三分类模式优于四分类模式和六分类模式。结论。研究结果为基于图像的热防护织物老化后机械强度评估提供了新的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.80
自引率
8.30%
发文量
152
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