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Segmentation Framework for Heat Loss Identification in Thermal Images: Empowering Scottish Retrofitting and Thermographic Survey Companies

Published: 22 May 2024 Publication History

Abstract

Retrofitting and thermographic survey (TS) companies in Scotland collaborate with social housing providers to tackle fuel poverty. They employ ground-level infrared (IR) camera-based-TSs (GIRTSs) for collecting thermal images to identify the heat loss sources resulting from poor insulation. However, this identification process is labor-intensive and time-consuming, necessitating extensive data processing. To automate this, an AI-driven approach is necessary. Therefore, this study proposes a deep learning (DL)-based segmentation framework using the Mask Region Proposal Convolutional Neural Network (Mask RCNN) to validate its applicability to these thermal images. The objective of the framework is to automatically identify, and crop heat loss sources caused by weak insulation, while also eliminating obstructive objects present in those images. By doing so, it minimizes labor-intensive tasks and provides an automated, consistent, and reliable solution. To validate the proposed framework, approximately 2500 thermal images were collected in collaboration with industrial TS partner. Then, 1800 representative images were carefully selected with the assistance of experts and annotated to highlight the target objects (TO) to form the final dataset. Subsequently, a transfer learning strategy was employed to train the dataset, progressively augmenting the training data volume and fine-tuning the pre-trained baseline Mask RCNN. As a result, the final fine-tuned model achieved a mean average precision (mAP) score of 77.2% for segmenting the TO, demonstrating the significant potential of proposed framework in accurately quantifying energy loss in Scottish homes.

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Published In

cover image Guide Proceedings
Advances in Brain Inspired Cognitive Systems: 13th International Conference, BICS 2023, Kuala Lumpur, Malaysia, August 5–6, 2023, Proceedings
Aug 2023
409 pages
ISBN:978-981-97-1416-2
DOI:10.1007/978-981-97-1417-9
  • Editors:
  • Jinchang Ren,
  • Amir Hussain,
  • Iman Yi Liao,
  • Rongjun Chen,
  • Kaizhu Huang,
  • Huimin Zhao,
  • Xiaoyong Liu,
  • Ping Ma,
  • Thomas Maul

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Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 22 May 2024

Author Tags

  1. Infrared thermographic testing
  2. instance segmentation
  3. Mask RCNN
  4. thermal images
  5. transfer learning

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