Publication | Open Access
Fast Binary Coding for the Scene Classification of High-Resolution Remote Sensing Imagery
27
Citations
66
References
2016
Year
Remote Sensing ImagesEngineeringFeature DetectionMachine LearningObject CategorizationImage RetrievalImage Recognition (Computer Vision)Image ClassificationImage AnalysisData ScienceImage ScenePattern RecognitionFeature (Computer Vision)Machine VisionImage Classification (Visual Culture Studies)Feature LearningImage Recognition (Visual Culture Studies)GeographyComputer ScienceComputer VisionLand Cover MapFast Binary CodingImage CodingScene ClassificationRemote SensingMedicineImage Classification (Electrical Engineering)
Scene classification of high-resolution remote sensing (HRRS) imagery is an important task in the intelligent processing of remote sensing images and has attracted much attention in recent years. Although the existing scene classification methods, e.g., the bag-of-words (BOW) model and its variants, can achieve acceptable performance, these approaches strongly rely on the extraction of local features and the complicated coding strategy, which are usually time consuming and demand much expert effort. In this paper, we propose a fast binary coding (FBC) method, to effectively generate efficient discriminative scene representations of HRRS images. The main idea is inspired by the unsupervised feature learning technique and the binary feature descriptions. More precisely, equipped with the unsupervised feature learning technique, we first learn a set of optimal “filters” from large quantities of randomly-sampled image patches and then obtain feature maps by convolving the image scene with the learned filters. After binarizing the feature maps, we perform a simple hashing step to convert the binary-valued feature map to the integer-valued feature map. Finally, statistical histograms computed on the integer-valued feature map are used as global feature representations of the scenes of HRRS images, similar to the conventional BOW model. The analysis of the algorithm complexity and experiments on HRRS image datasets demonstrate that, in contrast with existing scene classification approaches, the proposed FBC has much faster computational speed and achieves comparable classification performance. In addition, we also propose two extensions to FBC, i.e., the spatial co-occurrence matrix and different visual saliency maps, for further improving its final classification accuracy.
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