Abstract

Abstract. Studies based on object-based image analysis (OBIA) representing the paradigm shift in change detection (CD) have achieved remarkable progress in the last decade. Their aim has been developing more intelligent interpretation analysis methods in the future. The prediction effect and performance stability of random forest (RF), as a new kind of machine learning algorithm, are better than many single predictors and integrated forecasting method. In this paper, we present a novel CD approach for high-resolution remote sensing images, which incorporates visual saliency and RF. First, highly homogeneous and compact image super-pixels are generated using super-pixel segmentation, and the optimal segmentation result is obtained through image superimposition and principal component analysis (PCA). Second, saliency detection is used to guide the search of interest regions in the initial difference image obtained via the improved robust change vector analysis (RCVA) algorithm. The salient regions within the difference image that correspond to the binarized saliency map are extracted, and the regions are subject to the fuzzy c-means (FCM) clustering to obtain the pixel-level pre-classification result, which can be used as a prerequisite for superpixel-based analysis. Third, on the basis of the optimal segmentation and pixel-level pre-classification results, different super-pixel change possibilities are calculated. Furthermore, the changed and unchanged super-pixels that serve as the training samples are automatically selected. The spectral features and Gabor features of each super-pixel are extracted. Finally, superpixel-based CD is implemented by applying RF based on these samples. Experimental results on Ziyuan 3 (ZY3) multi-spectral images show that the proposed method outperforms the compared methods in the accuracy of CD, and also confirm the feasibility and effectiveness of the proposed approach.

Highlights

  • Change detection (CD) is an important research topic that leverages quantitative analysis of multi-temporal remotely sensed images to determine the process of land cover change, especially in the monitoring of building land, urban development and disaster assessment (Hazel 2001; Hussain et al 2013)

  • Three pixel-based change detection (CD) methods, such as Iterative Condition model (MRF-ICM), principal component analysis (PCA)-kMeans (Celik 2009), edge-based distance regularized level set evolution (DRLSE) (Li and Xu et al 2010; Lei, Shi and Wu 2017), and object-based change vector analysis (OCVA) are selected as the comparison methods. These methods are performed to obtain best CD maps and are applied to demonstrate the superiority of the proposed approach based on the combination of visual saliency and random forest (RF)

  • It can be seen that compared to MRF-ICM, PCA-kMeans methods, the DRLSE can further improve the accuracy of CD result

Read more

Summary

Introduction

Change detection (CD) is an important research topic that leverages quantitative analysis of multi-temporal remotely sensed images to determine the process of land cover change, especially in the monitoring of building land, urban development and disaster assessment (Hazel 2001; Hussain et al 2013). Along with the rapid development of remotely sensed image acquisition means and the gradual shortening of the acquisition cycle, the scope of its applications is becoming increasingly widespread and the application demand is expanding This presents higher requirements and challenges for CD technology. In the process of CD, we can take full advantage of spectral features and combine other features to improve the CD accuracy In this field, the most commonly used methods are object-based change vector analysis (OCVA), object-based correlation coefficient (OCC), object-based chi square transformation (OCST) (Wang, Yan and Wang 2014) etc. The most commonly used methods are object-based change vector analysis (OCVA), object-based correlation coefficient (OCC), object-based chi square transformation (OCST) (Wang, Yan and Wang 2014) etc These methods take advantage of the various features of the object, and incorporate them into analyses in later stage. The combination of object-based and pixel-based CD approaches helps to reduce the uncertainty

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