Predictive maintenance is a key aspect for the safety of critical infrastructure such as bridges, dams, and tunnels, where a failure can lead to catastrophic outcomes in terms of human lives and costs. The surge in Artificial Intelligence-driven visual robotic inspection methods necessitates high-quality datasets containing diverse defect classes with several instances on different conditions (e.g., material, illumination). In this context, we introduce a Controllable Object Inpainting Generative Adversarial Network (COIGAN) to synthetically generate realistic images that augment defect datasets. The effectiveness of the model is quantitatively validated by a Fréchet Inception Distance, which measures the similarity between the generated and training samples. To further evaluate the impact of COIGAN-generated images, a segmentation task was conducted, utilizing key performance metrics such as segmentation accuracy, mAP, mIoU, and F1 score, demonstrating that the synthetic images integrate seamlessly and produce results comparable to real defect images. Subsequently, COIGAN generability was successfully used for the segmentation of a defect-free dataset by inpainting defects. The results showcase COIGAN's ability to learn defect patterns and apply them in new contexts, preserving the original features of the base image and allowing the creation of new datasets with a desired multi-class distribution. Specifically, in the context of predictive maintenance, COIGAN enriches datasets, enabling deep learning models to more effectively identify potential infrastructure anomalies. Project page: https://bit.ly/4bzxwqf.
COIGAN: Controllable Object Inpainting Through Generative Adversarial Network for Defect Synthesis in Data Augmentation
Pietrini, Rocco;
2025-01-01
Abstract
Predictive maintenance is a key aspect for the safety of critical infrastructure such as bridges, dams, and tunnels, where a failure can lead to catastrophic outcomes in terms of human lives and costs. The surge in Artificial Intelligence-driven visual robotic inspection methods necessitates high-quality datasets containing diverse defect classes with several instances on different conditions (e.g., material, illumination). In this context, we introduce a Controllable Object Inpainting Generative Adversarial Network (COIGAN) to synthetically generate realistic images that augment defect datasets. The effectiveness of the model is quantitatively validated by a Fréchet Inception Distance, which measures the similarity between the generated and training samples. To further evaluate the impact of COIGAN-generated images, a segmentation task was conducted, utilizing key performance metrics such as segmentation accuracy, mAP, mIoU, and F1 score, demonstrating that the synthetic images integrate seamlessly and produce results comparable to real defect images. Subsequently, COIGAN generability was successfully used for the segmentation of a defect-free dataset by inpainting defects. The results showcase COIGAN's ability to learn defect patterns and apply them in new contexts, preserving the original features of the base image and allowing the creation of new datasets with a desired multi-class distribution. Specifically, in the context of predictive maintenance, COIGAN enriches datasets, enabling deep learning models to more effectively identify potential infrastructure anomalies. Project page: https://bit.ly/4bzxwqf.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

