Artificial Intelligence System Combining With Infrared Thermography and Visible Image for Abnormal Temperature Detection and Floor Material Identification

Thermographic imaging has gained significant use in recent years, particularly during the epidemic, including its application in architecture for damage detection on archeological monuments through temperature analysis. The noninvasive nature of thermographic imaging, along with its ability to visua...

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Main Authors: Chen, Tsung Yi, Huang, Ya Yun, Chu, Yu Chieh, Chen, Shih Lun, Chen, Xin Yu, Wu, Pei Chen, Tu, Wei Chen, Abu, Patricia Angela R.
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Published: Archīum Ateneo 2024
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Online Access:https://archium.ateneo.edu/discs-faculty-pubs/428
https://doi.org/10.1109/JSEN.2024.3439362
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spelling ph-ateneo-arc.discs-faculty-pubs-14302025-01-30T06:03:19Z Artificial Intelligence System Combining With Infrared Thermography and Visible Image for Abnormal Temperature Detection and Floor Material Identification Chen, Tsung Yi Huang, Ya Yun Chu, Yu Chieh Chen, Shih Lun Chen, Xin Yu Wu, Pei Chen Tu, Wei Chen Abu, Patricia Angela R. Thermographic imaging has gained significant use in recent years, particularly during the epidemic, including its application in architecture for damage detection on archeological monuments through temperature analysis. The noninvasive nature of thermographic imaging, along with its ability to visualize temperature levels, allows for problem identification while preserving the building's structure. The integration of artificial intelligence (AI) further enhances its potential applications. This study aims to propose an automated inspection system using a convolutional neural network (CNN) for analyzing abnormal floor blocks and their materials. A team of academicians with more than seven years of expertise in monument preservation gathered the imaging data for this investigation. They were in charge of collecting thermal imaging photographs of floors at significant monuments and aiding in the identification of overheating data and floor tile types. This study will propose three types of CNN models for recognition: one for identifying floors in visible images, one for detecting abnormal temperatures in thermal images, and one for recognizing materials in visible images. The block with abnormal temperature radiations can be determined from the floor by analyzing elevated temperatures. Subsequently, analyzing materials in abnormal block can efficiently identify problematic materials. The identification accuracy rate of this study is as high as 99.16%. Compared to the efficiency of professionals identifying 100 images, this research increases efficiency by approximately 99.92%, which is an amazing improvement. These functions increase the practicality of restoration efforts, improve restoration quality and efficiency, and contribute to academic research on ancient monument preservation. 2024-01-01T08:00:00Z text https://archium.ateneo.edu/discs-faculty-pubs/428 https://doi.org/10.1109/JSEN.2024.3439362 Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo Convolutional neural network (CNN) environmental protection image enhancement image segmentation monument protection thermographic image Computer Engineering Computer Sciences Engineering Physical Sciences and Mathematics
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic Convolutional neural network (CNN)
environmental protection
image enhancement
image segmentation
monument protection
thermographic image
Computer Engineering
Computer Sciences
Engineering
Physical Sciences and Mathematics
spellingShingle Convolutional neural network (CNN)
environmental protection
image enhancement
image segmentation
monument protection
thermographic image
Computer Engineering
Computer Sciences
Engineering
Physical Sciences and Mathematics
Chen, Tsung Yi
Huang, Ya Yun
Chu, Yu Chieh
Chen, Shih Lun
Chen, Xin Yu
Wu, Pei Chen
Tu, Wei Chen
Abu, Patricia Angela R.
Artificial Intelligence System Combining With Infrared Thermography and Visible Image for Abnormal Temperature Detection and Floor Material Identification
description Thermographic imaging has gained significant use in recent years, particularly during the epidemic, including its application in architecture for damage detection on archeological monuments through temperature analysis. The noninvasive nature of thermographic imaging, along with its ability to visualize temperature levels, allows for problem identification while preserving the building's structure. The integration of artificial intelligence (AI) further enhances its potential applications. This study aims to propose an automated inspection system using a convolutional neural network (CNN) for analyzing abnormal floor blocks and their materials. A team of academicians with more than seven years of expertise in monument preservation gathered the imaging data for this investigation. They were in charge of collecting thermal imaging photographs of floors at significant monuments and aiding in the identification of overheating data and floor tile types. This study will propose three types of CNN models for recognition: one for identifying floors in visible images, one for detecting abnormal temperatures in thermal images, and one for recognizing materials in visible images. The block with abnormal temperature radiations can be determined from the floor by analyzing elevated temperatures. Subsequently, analyzing materials in abnormal block can efficiently identify problematic materials. The identification accuracy rate of this study is as high as 99.16%. Compared to the efficiency of professionals identifying 100 images, this research increases efficiency by approximately 99.92%, which is an amazing improvement. These functions increase the practicality of restoration efforts, improve restoration quality and efficiency, and contribute to academic research on ancient monument preservation.
format text
author Chen, Tsung Yi
Huang, Ya Yun
Chu, Yu Chieh
Chen, Shih Lun
Chen, Xin Yu
Wu, Pei Chen
Tu, Wei Chen
Abu, Patricia Angela R.
author_facet Chen, Tsung Yi
Huang, Ya Yun
Chu, Yu Chieh
Chen, Shih Lun
Chen, Xin Yu
Wu, Pei Chen
Tu, Wei Chen
Abu, Patricia Angela R.
author_sort Chen, Tsung Yi
title Artificial Intelligence System Combining With Infrared Thermography and Visible Image for Abnormal Temperature Detection and Floor Material Identification
title_short Artificial Intelligence System Combining With Infrared Thermography and Visible Image for Abnormal Temperature Detection and Floor Material Identification
title_full Artificial Intelligence System Combining With Infrared Thermography and Visible Image for Abnormal Temperature Detection and Floor Material Identification
title_fullStr Artificial Intelligence System Combining With Infrared Thermography and Visible Image for Abnormal Temperature Detection and Floor Material Identification
title_full_unstemmed Artificial Intelligence System Combining With Infrared Thermography and Visible Image for Abnormal Temperature Detection and Floor Material Identification
title_sort artificial intelligence system combining with infrared thermography and visible image for abnormal temperature detection and floor material identification
publisher Archīum Ateneo
publishDate 2024
url https://archium.ateneo.edu/discs-faculty-pubs/428
https://doi.org/10.1109/JSEN.2024.3439362
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