Publication | Open Access
Multitemporal Relearning With Convolutional LSTM Models for Land Use Classification
55
Citations
43
References
2021
Year
Novel Hybrid FrameworkConvolutional Neural NetworkPrecision AgricultureEngineeringMachine LearningHigh ResolutionObject CategorizationLand UseHybrid FrameworkLand CoverLand DegradationLand Use ClassificationSocial SciencesImage ClassificationImage AnalysisData SciencePattern RecognitionSemantic SegmentationLand-use PlanningMachine VisionFeature LearningObject DetectionGeographyDeep LearningComputer VisionLand Cover MapRemote Sensing
In this article, we present a novel hybrid framework, which integrates spatial-temporal semantic segmentation with postclassification relearning, for multitemporal land use and land cover (LULC) classification based on very high resolution (VHR) satellite imagery. To efficiently obtain optimal multitemporal LULC classification maps, the hybrid framework utilizes a spatial-temporal semantic segmentation model to harness temporal dependency for extracting high-level spatial-temporal features. In addition, the principle of postclassification relearning is adopted to efficiently optimize model output. Thereby, the initial outcome of a semantic segmentation model is provided to a subsequent model via an extended input space to guide the learning of discriminative feature representations in an end-to-end fashion. Last, object-based voting is coupled with postclassification relearning for coping with the high intraclass and low interclass variances. The framework was tested with two different postclassification relearning strategies (i.e., pixel-based relearning and object-based relearning) and three convolutional neural network models, i.e., UNet, a simple Convolutional LSTM, and a UNet Convolutional-LSTM. The experiments were conducted on two datasets with LULC labels that contain rich semantic information and variant building morphologic features (e.g., informal settlements). Each dataset contains four time steps from WorldView-2 and Quickbird imagery. The experimental results unambiguously underline that the proposed framework is efficient in terms of classifying complex LULC maps with multitemporal VHR images.
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