Abstract
To improve the accuracy of change detection in urban areas using bi-temporal high-resolution remote sensing images, a novel object-based change detection scheme combining multiple features and ensemble learning is proposed in this paper. Image segmentation is conducted to determine the objects in bi-temporal images separately. Subsequently, three kinds of object features, i.e., spectral, shape and texture, are extracted. Using the image differencing process, a difference image is generated and used as the input for nonlinear supervised classifiers, including k-nearest neighbor, support vector machine, extreme learning machine and random forest. Finally, the results of multiple classifiers are integrated using an ensemble rule called weighted voting to generate the final change detection result. Experimental results of two pairs of real high-resolution remote sensing datasets demonstrate that the proposed approach outperforms the traditional methods in terms of overall accuracy and generates change detection maps with a higher number of homogeneous regions in urban areas. Moreover, the influences of segmentation scale and the feature selection strategy on the change detection performance are also analyzed and discussed.
Highlights
Changes of land use/cover in urban areas are complex owing to the frequent interaction between humans and the natural system
A novel change detection scheme that combines multiple features and the ensemble learning (EL) method is proposed for object-based change detection (OBCD) of urban areas using HR images
(3) Single supervised classifiers show unstable performances when dealing with different images or segmentation scales
Summary
Changes of land use/cover in urban areas are complex owing to the frequent interaction between humans and the natural system. Change detection methods can be broadly categorized into unsupervised or supervised methods [8,9] The former methods perform a direct comparison of the two multispectral images under consideration [10]. With regard to the application of EL in remote sensing, some studies have proved that the combination of different classifiers achieves better performance than the use of an individual classifier [14,15,16]. Owing to these principles and advantages of EL, the shortcomings of the aforementioned advanced classifiers might be overcome by using the ensemble strategy
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