TL;DR
This paper introduces a fully automated method for aircraft dent detection in 3D point clouds, combining synthetic data generation for training neural networks and a surface fitting strategy for efficient processing.
Contribution
It presents a novel synthetic dataset creation method for training deep learning models and a surface fitting approach that enhances processing efficiency for dent segmentation.
Findings
Achieved over 80% intersection-over-union in simulations.
Detected dents at speeds exceeding 500,000 points per second.
Demonstrated effective automated dent detection on real samples.
Abstract
Dents on the aircraft skin are frequent and may easily go undetected during airworthiness checks, as their inspection process is tedious and extremely subject to human factors and environmental conditions. Nowadays, 3D scanning technologies are being proposed for more reliable, human-independent measurements, yet the process of inspection and reporting remains laborious and time consuming because data acquisition and validation are still carried out by the engineer. For full automation of dent inspection, the acquired point cloud data must be analysed via a reliable segmentation algorithm, releasing humans from the search and evaluation of damage. This paper reports on two developments towards automated dent inspection. The first is a method to generate a synthetic dataset of dented surfaces to train a fully convolutional neural network. The training of machine learning algorithms needs…
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Taxonomy
MethodsRepair · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
