4.7 Article

Fine-Grained Building Change Detection From Very High-Spatial-Resolution Remote Sensing Images Based on Deep Multitask Learning

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LGRS.2020.3018858

Keywords

Task analysis; Buildings; Semantics; Feature extraction; Image segmentation; Remote sensing; Architecture; Building changes; deep multitask learning; fine-grained change detection; fully convolutional neural network (FCN); semantic segmentation

Funding

  1. National Natural Science Foundation of China [41801351, 41875122]
  2. Fundamental Research Funds for the Central Universities [19lgpy44]
  3. Open Fund of Key Laboratory of Geospatial Technology for the Middle and Lower Yellow River Regions (Henan University), Ministry of Education [GTYR201810]
  4. National Key Research and Development Program of China [2017YFA0604300, 2017YFA0604400]
  5. Western Talent [2018XBYJRC004]
  6. Guangdong Top Young Talents of Science and Technology [2017TQ04Z359]

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This study utilizes high-spatial-resolution remote sensing images for building change detection, proposing a deep multitask learning framework that leverages semantic segmentation of buildings for fine-grained change detection. Experiments on the Guangzhou dataset validate the effectiveness of the method in detecting fine-grained "from-to" changes.
Building change detection from very high-spatial-resolution (VHR) remote sensing images has gained increasing popularity in a variety of applications, such as urban planning and damage assessment. Detecting fine-grained x201C;fromx2013;tox201D; changes (change transition from one land cover type to another) of buildings from the VHR images is still challenging as multitemporal representation is complicated. Recently, fully convolutional neural networks (FCNs) have been proven to be capable of feature extraction and semantic segmentation of VHR images, but its ability in change detection is untested and unknown. In this letter, we leverage the semantic segmentation of buildings as an auxiliary source of information for the fine-grained x201C;fromx2013;tox201D; change detection. A deep multitask learning framework for change detection (MTL-CD) is proposed for detecting building changes from the VHR images. MTL-CD adopts the encoderx2013;decoder architecture and solves the main task of change detection and the auxiliary tasks of semantic segmentation simultaneously. Accordingly, the change detection loss function is constrained by the auxiliary semantic segmentation tasks and enables the back-propagation of the building footprintsx2019; detection errors for the improvement of change detection. A building change detection data set named the Guangzhou data set is also developed for model evaluation, in which the bitemporal Rx2013;Gx2013;B images were collected by airplane (2009) and unmanned aerial vehicle (UAV, 2019) with different flight heights. Experiments on the Guangzhou data set demonstrate that the MTL-CD method effectively detects fine-grained x201C;fromx2013;tox201D; changes and outperforms the postclassification methods and the direct change detection methods.

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