OpenMarshall:用于安全对接的飞机编组信号的开放集识别

Debabrata Pal, Anvita Singh, Hemant Khairnar, Abhishek Alladi
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引用次数: 0

摘要

飞机编组员为飞行员提供视觉对接指导,以安全操纵大型飞机,同时避开看不见的障碍物。虽然编组员训练有素,但在执行特定的编组信号时,世界各地的飞机编组员的手势差异很大。这给来自不同地理位置的飞行员解释所需的手势带来了很大的困难。此外,恶劣天气下能见度低,再加上大型飞机飞行员的高坐姿,增加了信号解码的复杂性。为了解决这个问题,我们提出了一种新的高保真手势跟踪模型OpenMarshall,该模型提取显著的身体关节进行编组,并在顺序学习单元的帮助下将手势信号实时分类为一组已知的编组信号和异常手势。一方面,我们的方法可以帮助编组员在训练阶段纠正手势,另一方面,驾驶舱中基于视觉的自动解码信号可以减少对接阶段飞行员的工作量。此外,我们在OpenMarshall培训期间增加了大量的闭塞模拟场景,以处理机场的严重闭塞。OpenMarshall是一个轻量级的、通用的探测器跟踪器管道,适合部署在平台无关的配置中,比如自主无人机、客机、商用飞机等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OpenMarshall: Open-Set Recognition of Aircraft Marshalling Signals for Safe Docking
Aircraft marshallers provide visual docking guidance to the pilots to safely maneuver large aircraft while avoiding unseen obstacles. Although the marshallers are well-trained, there exists a huge gesture variance for the aircraft marshallers worldwide in performing a specific marshalling signal. It creates great difficulty for a pilot from a different geographical location to interpret the desired hand signal. Besides, poor visibility in adverse weather coupled with the high pilot sitting position in big aircraft increases the signal deciphering complexity. To tackle this, we propose a novel high-fidelity gesture-tracking model, OpenMarshall, which extracts salient body joints for marshalling and performs real-time classification of hand signals into a set of known marshalling signals and anomalous gestures with the help of a sequential learning unit. On one hand, our approach can help the Aircraft Marshallers to rectify gestures in their training phase, and on the other hand, vision-based automatic deciphered signals in the cockpit can reduce the workload for a pilot in the docking phase. Additionally, we augment substantial occlusion-simulating scenarios during OpenMarshall training to deal with heavy occlusions in airports. OpenMarshall is a lightweight and generic detector-tracker pipeline that makes it suitable to deploy in platform-agnostic configurations, such as autonomous UAVs, passenger jets, commercial aircraft, etc.
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