Supervised object detection methods provide subpar performance when applied to Foreign Object Debris (FOD) detection because FOD could be arbitrary objects according to the Federal Aviation Administration (FAA) specification. Current supervised object detection algorithms require datasets that contain annotated examples of every to-be-detected object. While a large and expensive dataset could be developed to include common FOD examples, it is infeasible to collect all possible FOD examples in the dataset representation because of the open-ended nature of FOD. Limitations of the dataset could cause FOD detection systems driven by those supervised algorithms to miss certain FOD, which can become dangerous to airport operations. To this end, this paper presents a self-supervised FOD localization by learning to predict the runway images, which avoids the enumeration of FOD annotation examples. The localization method utilizes the Vision Transformer (ViT) to improve localization performance. The experiments show that the method successfully detects arbitrary FOD in real-world runway situations. The paper also provides an extension to the localization result to perform classification; a feature that can be useful to downstream tasks. To train the localization, this paper also presents a simple and realistic dataset creation framework that only collects clean runway images. The training and testing data for this method are collected at a local airport using unmanned aircraft systems (UAS). Additionally, the developed dataset is provided for public use and further studies.
翻译:监督对象探测方法在应用到外国物体碎片(FOD)探测时提供亚性性能,因为根据联邦航空管理局(FAA)的规格,FOD可能是任意的物体。目前受到监督的物体探测算法要求数据集包含每个待探测物体的附加示例。虽然可以开发一个庞大和昂贵的数据集,以包括共同的FOD示例,但在数据集代表中收集所有可能的FOD示例是不可行的。由于FOD的开放性质,该数据集的局限性可能导致FOD检测系统在那些受监督的算法驱动下错失某些FOD,这可能会对机场业务造成危险。为此,本文件通过学习预测跑道图像,提供自我监督的FOD本地化功能,从而避免罗列FOD注释示例。本地化方法利用视野变变异器来改进本地化性能。实验表明,该方法在现实世界跑道情况中成功地检测了任意的FODD。该数据集还扩展了对本地化结果进行分类,这可能会对机场作业造成危险。为此,本文展示了一种自我监督的FOD本地化本地化本地化的本地化特性,在机场上进行数据测试。在收集时,这是一种对地面上采集进行实地测试的一种方法。