Department of Mechanical Engineering, Advanced Institute of Manufacturing with High Tech Innovations (AIM-HI), Center for Innovative Research on Aging Society (CIRAS), National Chung Cheng University, 168, University Rd., Min Hsiung, Chiayi City 62102, Taiwan.
Ophthalmology, Kaohsiung Armed Forces General Hospital, 2, Zhongzheng 1st. Rd., Lingya District, Kaohsiung City 80284, Taiwan.
Sensors (Basel). 2022 Aug 19;22(16):6231. doi: 10.3390/s22166231.
Air pollution has emerged as a global problem in recent years. Particularly, particulate matter (PM2.5) with a diameter of less than 2.5 μm can move through the air and transfer dangerous compounds to the lungs through human breathing, thereby creating major health issues. This research proposes a large-scale, low-cost solution for detecting air pollution by combining hyperspectral imaging (HSI) technology and deep learning techniques. By modeling the visible-light HSI technology of the aerial camera, the image acquired by the drone camera is endowed with hyperspectral information. Two methods are used for the classification of the images. That is, 3D Convolutional Neural Network Auto Encoder and principal components analysis (PCA) are paired with VGG-16 (Visual Geometry Group) to find the optical properties of air pollution. The images are classified into good, moderate, and severe based on the concentration of PM2.5 particles in the images. The results suggest that the PCA + VGG-16 has the highest average classification accuracy of 85.93%.
近年来,空气污染已成为一个全球性问题。特别是直径小于 2.5μm 的颗粒物(PM2.5)可以在空气中移动,并通过人类呼吸将危险化合物转移到肺部,从而造成重大健康问题。本研究提出了一种大规模、低成本的空气污染检测解决方案,将高光谱成像(HSI)技术和深度学习技术相结合。通过对航空相机可见光 HSI 技术进行建模,为无人机相机拍摄的图像赋予高光谱信息。然后使用两种方法对图像进行分类。一种是将 3D 卷积神经网络自动编码器与主成分分析(PCA)与 VGG-16(视觉几何组)相结合,以找到空气污染的光学特性。根据图像中 PM2.5 颗粒的浓度,将图像分为良好、中等和严重三种情况。结果表明,PCA+VGG-16 的平均分类准确率最高,为 85.93%。