灰度
分形维数
箱式计数
图像(数学)
数字图像
维数(图论)
数字图像分析
人工智能
计算机视觉
污染
分形
分形分析
数学
计算机科学
环境科学
图像处理
数学分析
生物
生态学
纯数学
作者
Shaofeng Wang,Jiangjiang Yin,Yuntao Liang,Fuchao Tian
标识
DOI:10.1016/j.jclepro.2022.134691
摘要
The automatic and effective identification of mine dust draws growing public concern for its universality and being highly hazardous to health and property. Based on improved methods for improved grayscale average (IGSA) and fractal dimension (FD) theory, a vision-based system that employs digital image processing was proposed to recognize the dust particles. The proposed approach primarily included the following procedures: image matrix generation; pixel gradient calculations; image processing for sharpening, gray transformation, and binarization; IGSA and FD calculations, and visualization accomplishments. Image example results showed that FD appeared to have an exponential relationship with IGSA as well as dust pollution. Then, a dust pollution-level evaluation method based on the pollution-factor F p was established and contributed to the division of dust pollution regions. During the experiment, wind speed and hole distance were proved to demonstrate a positive and negative correlation with IGSA, respectively, while little impact was observed on the FD and F p with the factors. A dust pollution monitoring system that is theoretically viable was developed to form an Industrial Internet of Things with a topological structure. The proposed approach provides a digital image-processing method to integrally and automatically characterize the dust morphology. This approach can achieve dust pollution-level and regional divisions. • The digital image processing was used to recognize the dust particles. • The grayscale average and fractal dimension were used to assess pollution-level. • A new dust pollution-level evaluation method was established. • The influence of wind-speed and dust production point were investigated. • A dust pollution monitoring system was proposed by Industrial Internet of Things.
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