Patricia Melin, Daniela Sánchez, Martha Pulido, Oscar Castillo
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引用次数: 0
摘要
遏制新冠肺炎传播的预防措施强调了在日常活动中或在医院工作的医务人员佩戴口罩防止潜在严重疾病感染的重要性。由于强制使用口罩,出现了各种利用人工智能和深度学习来检测个人是否戴口罩的方法。在本文中,我们利用卷积神经网络(cnn)将口罩的使用分为三类:无口罩、不正确口罩和适当口罩。建立适当的CNN架构可能是一项艰巨的任务。本研究比较了四种群体智能元启发式算法:粒子群优化算法(PSO)、灰狼优化算法(GWO)、蝙蝠算法(BA)和鲸鱼优化算法(WOA)。CNN的架构设计包括确定CNN的基本超参数。结果表明,当使用10%的图像进行测试时,PSO和BA的准确性达到100%。同时,当使用90%的图像进行测试时,结果为:PSO 97.15%, WOA 97.14%, BA 97.23%, GWO 97.18%。这些统计上显著的差异表明,BA比本研究中分析的其他元启发式方法具有更好的结果。
Comparative Study of Metaheuristic Optimization of Convolutional Neural Networks Applied to Face Mask Classification
The preventive measures taken to curb the spread of COVID-19 have emphasized the importance of wearing face masks to prevent potential infection with serious diseases during daily activities or for medical professionals working in hospitals. Due to the mandatory use of face masks, various methods employing artificial intelligence and deep learning have emerged to detect whether individuals are wearing masks. In this paper, we utilized convolutional neural networks (CNNs) to classify the use of face masks into three categories: no mask, incorrect mask, and proper mask. Establishing the appropriate CNN architecture can be a demanding task. This study compares four swarm intelligent metaheuristics: particle swarm optimization (PSO), grey wolf optimizer (GWO), bat algorithm (BA), and whale optimization algorithm (WOA). The CNN architecture design involves determining the essential hyperparameters of the CNNs. The results indicate the effectiveness of the PSO and BA in achieving an accuracy of 100% when using 10% of the images for testing. Meanwhile, when 90% of the images were used for testing, the results were as follows: PSO 97.15%, WOA 97.14%, BA 97.23%, and GWO 97.18%. These statistically significant differences demonstrate that the BA allows better results than the other metaheuristics analyzed in this study.