Publication | Closed Access
Deep Hashing Learning for Visual and Semantic Retrieval of Remote Sensing Images
67
Citations
55
References
2020
Year
Remote Sensing ImagesConvolutional Neural NetworkEngineeringMachine LearningImage RetrievalImage SearchImage ClassificationImage AnalysisData SciencePattern RecognitionDeep Hashing LearningPerceptual HashingMachine VisionComputer ScienceDeep LearningRemote Sensing FieldComputer VisionSemantic RetrievalRetrieval MethodsRemote SensingContent-based Image Retrieval
Driven by the urgent demand for managing remote sensing big data, large-scale remote sensing image retrieval (RSIR) attracts increasing attention in the remote sensing field. In general, existing retrieval methods can be regarded as visual-based retrieval approaches that search and return a set of similar images to a given query image from a database. Although these retrieval methods have delivered good results, there is still a question that needs to be addressed: can we obtain the accurate semantic labels of the returned similar images to further help analyzing and processing imagery? To this end, in this article, we redefine the image retrieval problem as visual and semantic retrieval of images. Especially, we propose a novel deep hashing convolutional neural network (DHCNN) to retrieve similar images and classify their semantic labels simultaneously in a unified framework. In more detail, a convolutional neural network (CNN) is used to extract high-dimensional deep features. Then, a hash layer is perfectly inserted into the network to transfer the deep features into compact hash codes. In addition, a fully connected layer with a softmax function is performed on the hash layer to generate the probability distribution of each class. Finally, a loss function is elaborately designed to consider the label loss of each image and similarity loss of pairs of images simultaneously. Experimental results on three remote sensing data sets demonstrate that the proposed method can achieve state-of-art retrieval and classification performance.
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