Publication | Closed Access
Deep learning for multi-label land cover classification
31
Citations
20
References
2015
Year
Multiple Instance LearningEngineeringMachine LearningLand UseFeature Extraction ProcessLand CoverSocial SciencesImage ClassificationImage AnalysisData SciencePattern RecognitionSemi-supervised LearningUnified ClassificationMachine VisionFeature LearningGeographyComputer ScienceDeep LearningLand Cover MapComputer VisionRemote SensingCover MappingOptical Remote Sensing
Whereas single class classification has been a highly active topic in optical remote sensing, much less effort has been given to the multi-label classification framework, where pixels are associated with more than one labels, an approach closer to the reality than single-label classification. Given the complexity of this problem, identifying representative features extracted from raw images is of paramount importance. In this work, we investigate feature learning as a feature extraction process in order to identify the underlying explanatory patterns hidden in low-level satellite data for the purpose of multi-label classification. Sparse auto-encoders composed of a single hidden layer, as well as stacked in a greedy layer-wise fashion formulate the core concept of our approach. The results suggest that learning such sparse and abstract representations of the features can aid in both remote sensing and multi-label problems. The results presented in the paper correspond to a novel real dataset of annotated spectral imagery naturally leading to the multi-label formulation.
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