Abstract

Being one of the most important infrastructures, airports play a vital role in both civil fields and military fields. However, detect airports directly based on the whole scene remote sensing images (RSIs) with complex background remains challenging. To address this issue, this article proposes a method that mainly combines spectral features and geometric features of airports with concrete runways to detect multiple airports simultaneously from a whole scene multispectral image with medium-high spatial resolution and with comparatively few bands (contains blue, green, red, and near-infrared bands). Specifically, a decision tree algorithm was developed based on the analysis of spectral features to extract main concrete areas within the whole RSI. Then, the geometric features are used to aim at extracting the point marks of candidate airports. The influence of different image spatial resolutions of the proposed method is explored and the detection effect and processing efficiency of proposed method is verified based on whole scene RSIs with complex background. The analysis of experimental results shows that Sentinel-2 images is more suitable for airport detection than Gaofen-6 and Landsat-8 images based on the proposed method. In addition, the proposed method provides high-accuracy detection of category Ⅳ airports based on Sentinel-2 images with different background complexity in experimental areas indicate the proposed method has a high robust and a good applicability. Finally, run-time test of the proposed method was conducted, and it demonstrates the proposed method has the higher processing efficiency when applying to regional airport detection.

Highlights

  • T HE detection of man-made objects based on remote sensing images (RSIs) currently plays an important role in earthManuscript received August 22, 2021; revised October 31, 2021 and December 9, 2021; accepted December 29, 2021

  • Numerous previous studies have proposed various approaches to detect airports from different RSIs, and we summarize those studies from two aspects: one concerns the RSIs used in previous research, and the other considers the development of methods for airport detection

  • The analysis focuses mainly on the airports with concrete runways, some airports included in the analysis have runways made of different materials in a single RSI

Read more

Summary

Introduction

T HE detection of man-made objects based on remote sensing images (RSIs) currently plays an important role in earthManuscript received August 22, 2021; revised October 31, 2021 and December 9, 2021; accepted December 29, 2021. T HE detection of man-made objects based on remote sensing images (RSIs) currently plays an important role in earth. All such applications have benefited from the rapid development of remote sensing techniques, which have increased the quality and quantity of RSIs. As a typical man-made object, airports serve as fundamental transport infrastructure that promotes the economic development of their area and serve a critical role in the military infrastructure for maintaining national or regional security and stability [3], [4]. Dynamic monitoring of airports requires an efficient method to directly detect airports from RSIs

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call