2019
DOI: 10.3390/rs11192220
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Multiscale Spatial-Spectral Convolutional Network with Image-Based Framework for Hyperspectral Imagery Classification

Abstract: Jointly using spatial and spectral information has been widely applied to hyperspectral image (HSI) classification. Especially, convolutional neural networks (CNN) have gained attention in recent years due to their detailed representation of features. However, most of CNN-based HSI classification methods mainly use patches as input classifier. This limits the range of use for spatial neighbor information and reduces processing efficiency in training and testing. To overcome this problem, we propose an image-ba… Show more

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Cited by 31 publications
(18 citation statements)
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“…Chen et al [46] proposed a classification model based on the integration of deep learning model and random subspace-based ensemble learning, and used transfer learning strategy to speed up the learning stage. Cui et al [47] presented a multi-scale spatial-spectral CNN network (HyMSCN) to integrate multiple receiving field fusion features and multi-scale spatial features at different levels. The fused feature is developed by using lightweight blocks of multiple reception fields (MRFF), which contains various types of dilated convolutions.…”
Section: Hyperspectral Image Classification Methods Based On 2d-3d Cnnmentioning
confidence: 99%
“…Chen et al [46] proposed a classification model based on the integration of deep learning model and random subspace-based ensemble learning, and used transfer learning strategy to speed up the learning stage. Cui et al [47] presented a multi-scale spatial-spectral CNN network (HyMSCN) to integrate multiple receiving field fusion features and multi-scale spatial features at different levels. The fused feature is developed by using lightweight blocks of multiple reception fields (MRFF), which contains various types of dilated convolutions.…”
Section: Hyperspectral Image Classification Methods Based On 2d-3d Cnnmentioning
confidence: 99%
“…Henceforward, the deep learning technique has been increasingly favored by the scientific community attributing to its great power of abstracting representations to classify hyperspectral cubes into certain land cover categories [20][21][22][23]. As a consequence, Cui et al (2019) proposed a multiscale spatial-spectral convolutional neural network (CNN) to integrate multiple receptive fields fused features and multiscale spatial features at different levels [24]. Gao et al (2019) integrated t-distributed stochastic neighbor embedding with a CNN to capture the potential assembly features of HSIs [25].…”
Section: Introductionmentioning
confidence: 99%
“…An alternative is to use a CNN model pre-trained on a large-scale dataset, e.g., ImageNet, as a feature extractor. The pre-trained model can be further fine-tuned with a relatively small-scale dataset, e.g., derived from remote sensing images, via transfer learning [27][28][29][30]. For example, Rezaee et al [31] investigated the use of CNNs to derive deep features for wetland extraction from optical remote sensing images.…”
Section: Introductionmentioning
confidence: 99%