Fully automatic detection, feature extraction and classification of obstacles to air navigation

M. Messina, G. Pinelli
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引用次数: 1

Abstract

Correct identification of obstacles at the periphery of airports is an important issue to ensure safe takeoff, flight, and landing to aircrafts. This work is carried on as part of the obstacle risk assessment and risk mitigation operations in the aviation security framework. This paper presents a novel fully automatic remote sensing methodology for the detection, shape and signature extraction and classification of obstacles to air navigation from very high resolution (VHR) multispectral (MS) satellite stereo couples images, here defined feature extraction (FE). In order to reduce the costs, the proposed technique is applied only on detailed areas where orographic/topographic changes potentially associated with variations in the obstacles to air navigation in wide areas have been previously detected through a low-cost pre-screening change detection (CD) methodology applied to cheaper high resolution (HR) satellite imagery. The combination of CD and FE strategies offers a low-cost and fast solution to the problem of updating airport obstacle chart.
全自动检测、特征提取和分类空中导航障碍
正确识别机场外围障碍物是保证飞机安全起飞、飞行和降落的重要问题。这项工作是航空安全框架内障碍风险评估和风险缓解业务的一部分。本文提出了一种新的全自动遥感方法,用于从高分辨率(VHR)多光谱(MS)卫星立体影像中对空中导航障碍物进行检测、形状和特征提取和分类,这里定义了特征提取(FE)。为了降低成本,所提出的技术仅适用于地形/地形变化可能与大范围空中航行障碍变化相关的详细区域,这些区域以前已经通过低成本的预筛选变化检测(CD)方法检测到,该方法应用于更便宜的高分辨率(HR)卫星图像。将CD策略与FE策略相结合,为机场障碍图更新问题提供了一种低成本、快速的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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