Airport runway segmentation can effectively reduce the accident rate during the landing phase, which has the largest risk of flight accidents. With the rapid development of deep learning (DL), related methods achieve good performance on segmentation tasks and can be well adapted to complex scenes. However, the lack of large-scale, publicly available datasets in this field makes the development of methods based on DL difficult. Therefore, we propose a benchmark for airport runway segmentation, named BARS. Additionally, a semiautomatic annotation pipeline is designed to reduce the annotation workload. BARS has the largest dataset with the richest categories and the only instance annotation in the field. The dataset, which was collected using the X-Plane simulation platform, contains 10,256 images and 30,201 instances with three categories. We evaluate eleven representative instance segmentation methods on BARS and analyze their performance. Based on the characteristic of an airport runway with a regular shape, we propose a plug-and-play smoothing postprocessing module (SPM) and a contour point constraint loss (CPCL) function to smooth segmentation results for mask-based and contour-based methods, respectively. Furthermore, a novel evaluation metric named average smoothness (AS) is developed to measure smoothness. The experiments show that existing instance segmentation methods can achieve prediction results with good performance on BARS. SPM and CPCL can effectively enhance the AS metric while modestly improving accuracy. Our work will be available at https://github.com/c-wenhui/BARS.
翻译:机场跑道分割可以有效降低着陆阶段的事故率, 这是航班事故风险最大的阶段。随着深度学习(DL)的快速发展, 相关方法在分割任务上取得了良好的性能, 并且可以很好地适应复杂场景。但是, 在这个领域缺乏大规模、公开的数据集, 使得基于DL的方法的开发变得困难。因此, 我们提出了一个名为BARS的机场跑道分割基准。此外, 我们设计了一个半自动的注释管道来减少注释工作量。BARS是该领域中最大的数据集, 具有最丰富的类别和唯一的实例注释。收集所使用的数据集使用了X-Plane模拟平台, 包含10,256张图像和30,201个实例, 分为三类。我们在BARS上评估了十一个代表性实例分割方法, 并分析了它们的性能。基于具有规则形状的机场跑道的特点, 我们提出了一个即插即用的平滑后处理模块(SPM)和一个轮廓点约束损失(CPCL)函数, 分别用于基于掩模和轮廓的方法平滑分割结果。此外, 我们还开发了一种新的评估指标, 即平均平滑度(AS), 用于测量平滑度。实验表明, 现有实例分割方法可以在BARS上实现良好性能的预测结果。SPM和CPCL可以有效地增强AS度量, 同时稍微提高准确性。我们的工作将在https://github.com/c-wenhui/BARS上提供。