Unmanned Aircraft Systems (UAS) have become an important resource for public service providers and smart cities. The purpose of this study is to expand this research area by integrating computer vision and UAS technology to automate public inspection. As an initial case study for this work, a dataset of common foreign object debris (FOD) is developed to assess the potential of light-weight automated detection. This paper presents the rationale and creation of this dataset. Future iterations of our work will include further technical details analyzing experimental implementation. At a local airport, UAS and portable cameras are used to collect the data contained in the initial version of this dataset. After collecting these videos of FOD, they were split into individual frames and stored as several thousand images. These frames are then annotated following standard computer vision format and stored in a folder-structure that reflects our creation method. The dataset annotations are validated using a custom tool that could be abstracted to fit future applications. Initial detection models were successfully created using the famous You Only Look Once algorithm, which indicates the practicality of the proposed data. Finally, several potential scenarios that could utilize either this dataset or similar methods for other public service are presented.
翻译:无人驾驶航空器系统(UAS)已成为公共服务提供者和智能城市的一个重要资源。本研究的目的是通过整合计算机视觉和UAS技术,使公众检查自动化,扩大这一研究领域。作为这项工作的初步案例研究,开发了一个常见的外国物体碎片数据集,以评估轻量自动探测的潜力。本文件介绍了这一数据集的理由和创建情况。我们今后工作的迭代将包括进一步的技术细节分析实验实施情况。在当地机场,UAS和便携式照相机被用来收集该数据集初始版本中的数据。在收集FOD的这些视频后,这些视频被拆成单个框架,并存储成数千张图像。这些框架随后按照标准的计算机视觉格式附加说明,并存储在反映我们创建方法的文件夹结构中。数据集说明使用一种定制工具加以验证,该工具可以抽取,以适应今后的应用。最初的探测模型是使用著名的“你只看一次”算法成功创建的,该算法表明了拟议数据的实用性。最后,提出了几种可能的情况,既可以使用这一数据集,也可以将类似方法用于其他公共服务。