Deep Learning-Based Biomimetic Identification Method for Mask Wearing Standardization.

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY Biomimetics Pub Date : 2024-09-18 DOI:10.3390/biomimetics9090563
Bin Yan, Xiameng Li, Wenhui Yan
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Abstract

Deep learning technology can automatically learn features from large amounts of data, with powerful feature extraction and pattern recognition capabilities, thereby improving the accuracy and efficiency of object detection. [The objective of this study]: In order to improve the accuracy and speed of mask wearing deep learning detection models in the post pandemic era, the [Problem this study aimed to resolve] was based on the fact that no research work has been reported on standardized detection models for mask wearing with detecting nose targets specially. [The topic and method of this study]: A mask wearing normalization detection model (towards the wearing style exposing the nose to outside, which is the most obvious characteristic of non-normalized style) based on improved YOLOv5s (You Only Look Once v5s is an object detection network model) was proposed. [The improved method of the proposed model]: The improvement design work of the detection model mainly includes (1) the BottleneckCSP (abbreviation of Bottleneck Cross Stage Partial) module was improved to a BottleneckCSP-MASK (abbreviation of Bottleneck Cross Stage Partial-MASK) module, which was utilized to replace the BottleneckCSP module in the backbone architecture of the original YOLOv5s model, which reduced the weight parameters' number of the YOLOv5s model while ensuring the feature extraction effect of the bonding fusion module. (2) An SE module was inserted into the proposed improved model, and the bonding fusion layer in the original YOLOv5s model was improved for better extraction of the features of mask and nose targets. [Results and validation]: The experimental results indicated that, towards different people and complex backgrounds, the proposed mask wearing normalization detection model can effectively detect whether people are wearing masks and whether they are wearing masks in a normalized manner. The overall detection accuracy was 99.3% and the average detection speed was 0.014 s/pic. Contrasted with original YOLOv5s, v5m, and v5l models, the detection results for two types of target objects on the test set indicated that the mAP of the improved model increased by 0.5%, 0.49%, and 0.52%, respectively, and the size of the proposed model compressed by 10% compared to original v5s model. The designed model can achieve precise identification for mask wearing behaviors of people, including not wearing a mask, normalized wearing, and wearing a mask non-normalized.

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基于深度学习的仿生识别方法,用于口罩佩戴标准化。
深度学习技术可以从海量数据中自动学习特征,具有强大的特征提取和模式识别能力,从而提高物体检测的准确性和效率。[本研究的目的]本研究旨在解决的问题]是基于目前还没有关于佩戴口罩时专门检测鼻部目标的标准化检测模型的研究工作报道,为了提高后大流行时代佩戴口罩深度学习检测模型的准确性和速度。[本研究的主题和方法]:提出了一种基于改进的 YOLOv5s(You Only Look Once v5s 是一种对象检测网络模型)的口罩佩戴规范化检测模型(针对鼻子暴露在外部的佩戴方式,这是非规范化佩戴方式的最明显特征)。[提出模型的改进方法]:该检测模型的改进设计工作主要包括:(1)将 BottleneckCSP(Bottleneck Cross Stage Partial 的缩写)模块改进为 BottleneckCSP-MASK(Bottleneck Cross Stage Partial-MASK 的缩写)模块,利用该模块替代原 YOLOv5s 模型主干架构中的 BottleneckCSP 模块,在保证粘合融合模块特征提取效果的同时,减少了 YOLOv5s 模型的权重参数个数。(2)在改进后的模型中加入 SE 模块,改进了原 YOLOv5s 模型中的结合融合层,从而更好地提取面罩和鼻子目标的特征。[结果与验证]实验结果表明,对于不同的人和复杂的背景,所提出的戴口罩归一化检测模型可以有效地检测出人是否戴口罩以及是否以归一化的方式戴口罩。总体检测准确率为 99.3%,平均检测速度为 0.014 s/pic。与原有的 YOLOv5s、v5m 和 v5l 模型相比,测试集上两类目标对象的检测结果表明,改进模型的 mAP 分别比原有的 v5s 模型提高了 0.5%、0.49% 和 0.52%,体积压缩了 10%。所设计的模型可以实现对人们戴口罩行为的精确识别,包括不戴口罩、规范化戴口罩和非规范化戴口罩。
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
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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