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High-Resolution Remote Sensing Data Classification over Urban Areas Using Random Forest Ensemble and Fully Connected Conditional Random Field
Oct 30, 2017Author:
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Title: High-Resolution Remote Sensing Data Classification over Urban Areas Using Random Forest Ensemble and Fully Connected Conditional Random Field

 Authors: Sun, XF; Lin, XG; Shen, SH; Hu, ZY

 Author Full Names: Sun, Xiaofeng; Lin, Xiangguo; Shen, Shuhan; Hu, Zhanyi

 Source: ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 6 (8):10.3390/ijgi6080245 AUG 2017

 Language: English

 Abstract: As an intermediate step between raw remote sensing data and digital maps, remote sensing data classification has been a challenging and long-standing problem in the remote sensing research community. In this work, an automated and effective supervised classification framework is presented for classifying high-resolution remote sensing data. Specifically, the presented method proceeds in three main stages: feature extraction, classification, and classified result refinement. In the feature extraction stage, both multispectral images and 3D geometry data are used, which utilizes the complementary information from multisource data. In the classification stage, to tackle the problems associated with too many training samples and take full advantage of the information in the large-scale dataset, a random forest (RF) ensemble learning strategy is proposed by combining several RF classifiers together. Finally, an improved fully connected conditional random field (FCCRF) graph model is employed to derive the contextual information to refine the classification results. Experiments on the ISPRS Semantic Labeling Contest dataset show that the presented 3-stage method achieves 86.9% overall accuracy, which is a new state-of-the-art non-CNN (convolutional neural networks)-based classification method.

 ISSN: 2220-9964

 Article Number: 245

 IDS Number: FF4AP

 Unique ID: WOS:000408868400017

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