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Automatic Detection of Linear Thermal Bridges from Infrared Thermal Images Using Neural Network

Changmin Kim, Jae-Sol Choi, Hyang-In Jang, Eui-Jong Kim

2021Applied Sciences24 citationsDOIOpen Access PDF

Abstract

Detecting thermal bridges in building envelopes should be a priority to improve the thermal performance of buildings. Recently, thermographic surveys are being used to detect thermal bridges. However, conventional methods of detecting thermal bridges from thermal images rely on the subjective judgment of audits. Research has been conducted to automatically detect thermal bridges from thermal images to improve problems caused by such subjective judgment, but most of these studies are still in the early stage. Therefore, this study proposes a linear thermal bridge detection method based on image processing and machine learning. The proposed method includes thermal anomaly area clustering, feature extraction, and an artificial-neural-network-based thermal bridge detection. The proposed method was validated by detecting the thermal bridges in actual buildings. As a result, the average precision, recall, and F-score were 89.29%, 87.29, and 87.63%, respectively.

Topics & Concepts

ThermalArtificial neural networkComputer scienceArtificial intelligenceBridge (graph theory)Feature extractionThermal infraredPattern recognition (psychology)Computer visionInfraredGeographyOpticsMedicineInternal medicineMeteorologyPhysicsThermography and Photoacoustic TechniquesConservation Techniques and StudiesStructural Health Monitoring Techniques
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