Garcia Vargas, IagoFernandes, Henrique2025-03-032025-03-032025-01-24Garcia Vargas I, Fernandes H. (2025) Spatial and temporal deep learning algorithms for defect segmentation in infrared thermographic imaging of carbon fibre-reinforced polymers. Nondestructive Testing and Evaluation, Available online 24 January 20251058-9759https://doi.org/10.1080/10589759.2025.2457593https://dspace.lib.cranfield.ac.uk/handle/1826/23532For non-destructive evaluation, the segmentation of infrared thermographic images of carbon fibre composites is a critical task in material characterisation and quality assessment. This paper presents a study on the application of image processing techniques, particularly adaptive thresholding, and advanced neural network models, including U-Net, DeepLabv3, and BiLSTM, for the segmentation of infrared images. This work introduces the innovative combination of DeepLabv3 and BiLSTM applied in infrared images of carbon fibre-reinforced polymer samples for the first time, proposing it as a novel approach for enhancing the accuracy of segmentation tasks. An experimental comparison of these models was conducted to assess their effectiveness in identifying artificial defects in these images. The performance of each model was evaluated using the F1-Score and Intersection over Union (IoU) metrics. The results demonstrate that the proposed combination of DeepLabv3 and BiLSTM outperforms other methods, achieving an F1-Score of 0.96 and an IoU of 0.83, showcasing its potential for advanced material analysis and quality control.pp. xx-xxenAttribution 4.0 Internationalhttp://creativecommons.org/licenses/by/4.0/Infrared thermographsegmentationU-NetDeepLabv3BiLSTMcomposite material40 Engineering4016 Materials EngineeringMachine Learning and Artificial IntelligenceAcousticsSpatial and temporal deep learning algorithms for defect segmentation in infrared thermographic imaging of carbon fibre-reinforced polymersArticle1477-2671563492ahead-of-printahead-of-print