Abstract

Multitemporal synthetic aperture radar (SAR) images have been widely used for change detection and monitoring of the environment owing to their competency under all weather conditions. However, owing to speckle backgrounds and strong reflections, change detection in urban areas is challenging. In this study, to automatically extract changed objects, we developed a model that integrated change detection and object extraction in multiple Korean Multi-Purpose Satellite-5 (KOMPSAT-5) images. Initially, two arbitrary L1A-level SAR images were input into the proposed model, and after pre-processing, such as radio calibration and coordinate system processing, change detection was performed. Subsequently, the desired targets were automatically extracted from the change detection results. Finally, the model obtained images of the extraction targets and metadata, such as date and location. Noise was removed by applying scale-adaptive modification to the generated difference image during the change detection process, and the detection accuracy was improved by emphasizing the occurrence of the change. After polygonizing the pixel groups of the change detection map in the target extraction process, the morphology-based object filtering technique was applied to minimize the false detection rate. As a result of the proposed approach, the changed objects in the KOMPSAT-5 images were automatically extracted with 90% accuracy.

Highlights

  • Synthetic aperture radar (SAR) employs active electromagnetic waves in the microband that have high transmittance in the atmosphere and are less affected by weather conditions than optical images [1,2]

  • The constant false alarm rate (CFAR) approach, which reorganizes the pixel-level intensity differences between the targets and clutter based on a statistical model, has been the most widely utilized method for target detection owing to its advantages of low-cost computation and adaptive threshold determination [28]

  • To automatically extract changed objects in multiple KOMPAT-5 datasets, we developed a model that integrated change detection and object extraction for the first time

Read more

Summary

Introduction

Synthetic aperture radar (SAR) employs active electromagnetic waves in the microband that have high transmittance in the atmosphere and are less affected by weather conditions than optical images [1,2]. The most commonly acquired improved DI values are mean-ratio DI [16], neighbor-based ratio (NR) DI [17] and Gauss ratio operator [18] These methods increase the change detection accuracy by combining local spatial information with a mean operation. The constant false alarm rate (CFAR) approach, which reorganizes the pixel-level intensity differences between the targets and clutter based on a statistical model, has been the most widely utilized method for target detection owing to its advantages of low-cost computation and adaptive threshold determination [28]. To improve the change detection performance, a scale-adaptive DI modification method was proposed This method can be applied regardless of the image complexity or resolution because it performs a scalable transformation of the overall DI.

Dataset
Preprocessing
Difference Image Generation
Scale-Adaptive DI Modification Method
Feature-Based Polygonization of Changed Pixels Groups
Morphology-Based Target Extraction Method
Target Extraction Performance
Integrated Performance and Discussion
Findings
Conclusions
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