Abstract

Airport detection in synthetic aperture radar (SAR) images has attracted much concern in the field of remote sensing. Affected by other salient objects with geometrical features similar to those of airports, traditional methods often generate false detections. In order to produce the geometrical features of airports and suppress the influence of irrelevant objects, we propose a novel method for airport detection in SAR images. First, a salient line segment detector is constructed to extract salient line segments in the SAR images. Second, we obtain the airport support regions by grouping these line segments according to the commonality of these geometrical features. Finally, we design an edge-oriented region growing (EORG) algorithm, where growing seeds are selected from the airport support regions with the help of edge information in SAR images. Using EORG, the airport region can be mapped by performing region growing with these seeds. We implement experiments on real radar images to validate the effectiveness of our method. The experimental results demonstrate that our method can acquire more accurate locations and contours of airports than several state-of-the-art airport detection algorithms.

Highlights

  • S YNTHETIC aperture radar (SAR) can achieve all-day and all-weather imaging of the earth’s surface [1], [2]

  • In order to suppress the influence of irrelevant linear objects and reduce false alarms of line segments, we propose a novel salient line segment detector (SLSD)

  • In the usual line segment detector (LSD), the gradient magnitudes are only used for the selection of seeds in the region growing process for the acquisition of line support regions, whereas the local orientations are related to the region growing rules

Read more

Summary

INTRODUCTION

S YNTHETIC aperture radar (SAR) can achieve all-day and all-weather imaging of the earth’s surface [1], [2]. To solve the problem of high false alarms of traditional LSD algorithms in airport detection, a salient line segment detector (SLSD) based on LSD and gradient by ratio (GR) [35] is proposed in this article. 2) An effective edge-oriented region growing (EORG) algorithm is designed to extract the airport contours This algorithm makes full use of the intensity information and edge features of the airports in SAR images, which helps produce precise detection results. The airport support regions are acquired by coarse detection first, and the airport contours are extracted by fine detection nearby those regions This method avoids detailed pixel-wise analysis of the entire large-scene SAR images and limits the computational complexity as a result.

METHODOLOGY
Airport Support Region Acquisition
Edge-Oriented Region Growing
EXPERIMENTS
Dataset and Evaluation Metrics
Comparison of the LSD Results
DETECTION METHODS
Comparison of the Airport Contour Detection Results
Comparison of the Airport Location Detection Results
Parameter Setting
Findings
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