Abstract
By labelling high spatial resolution (HSR) images with specific semantic classes according to geographical properties, scene classification has been proven to be an effective method for HSR remote sensing image semantic interpretation. Deep learning is widely applied in HSR remote sensing scene classification. Most of the scene classification methods based on deep learning assume that the training datasets and the test datasets come from the same datasets or obey similar feature distributions. However, in practical application scenarios, it is difficult to guarantee this assumption. For new datasets, it is time-consuming and labor-intensive to repeat data annotation and network design. The neural architecture search (NAS) can automate the process of redesigning the baseline network. However, traditional NAS lacks the generalization ability to different settings and tasks. In this paper, a novel neural network search architecture framework—the spatial generalization neural architecture search (SGNAS) framework—is proposed. This model applies the NAS of spatial generalization to cross-domain scene classification of HSR images to bridge the domain gap. The proposed SGNAS can automatically search the architecture suitable for HSR image scene classification and possesses network design principles similar to the manually designed networks. To obtain a simple and low-dimensional search space, the traditional NAS search space was optimized and the human-the-loop method was used. To extend the optimized search space to different tasks, the search space was generalized. The experimental results demonstrate that the network searched by the SGNAS framework with good generalization ability displays its effectiveness for cross-domain scene classification of HSR images, both in accuracy and time efficiency.
Highlights
With the continuous development of satellite sensors, the resolution of remote sensing images is improving, and fine-scale information can be obtained from high spatial resolution (HSR) remote sensing images [1]
Seven similar types were selected from the Northwestern Polytechnical University (NWPU)-RESIST45 dataset for incorrect classifications of the test images in each classindustrial and accumulating the lot, results in the experiments: dense residential, forest, golf course, area, parking rectanagular table.farmland, and river
A spatial generalization neural search framework was proposed in this paper that applies the spatial generalization neural architecture search (NAS) to the cross-domain scene classification task of HSR
Summary
With the continuous development of satellite sensors, the resolution of remote sensing images is improving, and fine-scale information can be obtained from high spatial resolution (HSR) remote sensing images [1]. HSR remote sensing images have many textural, structural, and spectral characteristics [2,3]. These data demonstrate the phenomena of a complex spatial arrangement with high intraclass and low interclass variabilities, giving rise to difficulties in image classification and recognition [4,5]. The pixel-level remote sensing image classification method cannot be effective. The object-oriented classification method is proposed and widely used in HSR images [6,7,8]. The object-oriented classification method can accurately identify the target information and features in HSR remote sensing images
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