Reuse of secondhand TVs exported from Japan to the Philippines
In: Waste management: international journal of integrated waste management, science and technology, Band 30, Heft 6, S. 1063-1072
ISSN: 1879-2456
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In: Waste management: international journal of integrated waste management, science and technology, Band 30, Heft 6, S. 1063-1072
ISSN: 1879-2456
In: Journal of the City Planning Institute of Japan, Band 37, Heft 0, S. 307-312
ISSN: 2185-0593
In: Waste management: international journal of integrated waste management, science and technology, Band 29, Heft 5, S. 1602-1614
ISSN: 1879-2456
In: Waste management: international journal of integrated waste management, science and technology, Band 39, S. 246-257
ISSN: 1879-2456
In: Waste management: international journal of integrated waste management, science and technology, Band 33, Heft 2, S. 474-483
ISSN: 1879-2456
In: Waste management: international journal of integrated waste management, science and technology, Band 32, Heft 1, S. 96-103
ISSN: 1879-2456
In: Waste management: international journal of integrated waste management, science and technology, Band 34, Heft 2, S. 536-541
ISSN: 1879-2456
In: Sustainability Through Innovation in Product Life Cycle Design; EcoProduction, S. 197-213
In: RECYCL-D-23-02043
SSRN
In: Annals of work exposures and health: addressing the cause and control of work-related illness and injury, Band 68, Heft 4, S. 420-426
ISSN: 2398-7316
Abstract
Since the manufacture, import, and use of asbestos products have been completely abolished in Japan, the main cause of asbestos emissions into the atmosphere is the demolition and removal of buildings built with asbestos-containing materials. To detect and correct asbestos emissions from inappropriate demolition and removal operations at an early stage, a rapid method to measure atmospheric asbestos fibers is required. The current rapid measurement method is a combination of short-term atmospheric sampling and phase-contrast microscopy counting. However, visual counting takes a considerable amount of time and is not sufficiently fast. Using artificial intelligence (AI) to analyze microscope images to detect fibers may greatly reduce the time required for counting. Therefore, in this study, we investigated the use of AI image analysis for detecting fibers in phase-contrast microscope images. A series of simulated atmospheric samples prepared from standard samples of amosite and chrysotile were observed using a phase-contrast microscope. Images were captured, and training datasets were created from the counting results of expert analysts. We adopted 2 types of AI models—an instance segmentation model, namely the mask region-based convolutional neural network (Mask R-CNN), and a semantic segmentation model, namely the multi-level aggregation network (MA-Net)—that were trained to detect asbestos fibers. The accuracy of fiber detection achieved with the Mask R-CNN model was 57% for recall and 46% for precision, whereas the accuracy achieved with the MA-Net model was 95% for recall and 91% for precision. Therefore, satisfactory results were obtained with the MA-Net model. The time required for fiber detection was less than 1 s per image in both AI models, which was faster than the time required for counting by an expert analyst.