Please use this identifier to cite or link to this item: http://dspace2020.uniten.edu.my:8080/handle/123456789/9119
Title: Scene classification for aerial images based on CNN using sparse coding technique
Authors: Qayyum, A.
Malik, A.S.
Saad, N.M.
Iqbal, M.
Faris Abdullah, M.
Rasheed, W.
Rashid Abdullah, T.A.
Bin Jafaar, M.Y.
Issue Date: 2017
Abstract: Aerial scene classification purposes to automatically label aerial images with specific semantic categories. However, cataloguing presents a fundamental problem for high-resolution remote-sensing imagery (HRRS). Recent developments include several approaches and numerous algorithms address the task. This article proposes a convolutional neural network (CNN) approach that utilizes sparse coding for scene classification applicable for HRRS unmanned aerial vehicle (UAV) and satellite imagery. The article has two major sections: the first describes the extraction of dense multiscale features (multiple scales) from the last convolutional layer of a pre-trained CNN models; the second describes the encoding of extracted features into global image features via sparse coding to achieve scene classification. The authors compared experimental outcomes with existing techniques such as Scale-Invariant Feature Transform and demonstrated that features from pre-trained CNNs generalized well with HRRS datasets and were more expressive than low- and mid-level features, exhibiting an overall 90.3% accuracy rate for scene classification compared to 85.4% achieved by SIFT with sparse coding. Thus, the proposed CNN-based sparse coding approach obtained a robust performance that holds promising potential for future applications in satellite and UAV imaging. © 2017 Informa UK Limited, trading as Taylor & Francis Group.
Appears in Collections:COE Scholarly Publication

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