论文标题
飞机凹痕的自动分割在点云中
Automatic Segmentation of Aircraft Dents in Point Clouds
论文作者
论文摘要
飞机皮肤上的凹痕频繁,在适航性检查期间很容易被发现,因为它们的检查过程繁琐,并且极为受人为因素和环境条件的影响。如今,正在提出3D扫描技术,以实现更可靠的人类独立的测量,但是检查和报告的过程仍然在艰巨而耗时,因为数据获取和验证仍由工程师进行。为了完全自动化凹痕检查,必须通过可靠的分割算法对获得的点云数据进行分析,从而从搜索和损害评估中释放人。本文报告了两项针对自动凹痕检查的发展。第一个是生成凹痕表面的合成数据集以训练完全卷积神经网络的方法。机器学习算法的培训需要大量的凹痕数据,这是不容易获得的。因此,凹痕在标准和波音737结构修复手册的标准和定义下以随机位置和形状进行模拟。然后添加来自扫描设备的噪声分布,以反映训练中3D点采集的完整过程。第二个命题是将3D点云转换为2.5D的表面拟合策略。与涉及3D采样方法的最新方法相比,这允许使用少量内存处理更高分辨率的点云。具有可用地面真实数据的模拟表明,所提出的技术达到了超过80%的交叉点。对凹痕样品的实验证明,每秒超过500 000点的凹痕有效检测。
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 a substantial volume of dent data, which is not readily available. Dents are thus simulated in random positions and shapes, within criteria and definitions of a Boeing 737 structural repair manual. The noise distribution from the scanning apparatus is then added to reflect the complete process of 3D point acquisition on the training. The second proposition is a surface fitting strategy to convert 3D point clouds to 2.5D. This allows higher resolution point clouds to be processed with a small amount of memory compared with state-of-the-art methods involving 3D sampling approaches. Simulations with available ground truth data show that the proposed technique reaches an intersection-over-union of over 80%. Experiments over dent samples prove an effective detection of dents with a speed of over 500 000 points per second.