Hyperspectral image classification based on a shuffled group convolutional neural network with transfer learning
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https://hdl.handle.net/10037/22936Date
2020-06-01Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
Convolutional neural networks (CNNs) have been widely applied in hyperspectral imagery
(HSI) classification. However, their classification performance might be limited by the scarcity of
labeled data to be used for training and validation. In this paper, we propose a novel lightweight
shuffled group convolutional neural network (abbreviated as SG-CNN) to achieve efficient training
with a limited training dataset in HSI classification. SG-CNN consists of SG conv units that employ
conventional and atrous convolution in different groups, followed by channel shuffle operation and
shortcut connection. In this way, SG-CNNs have less trainable parameters, whilst they can still be
accurately and efficiently trained with fewer labeled samples. Transfer learning between different HSI
datasets is also applied on the SG-CNN to further improve the classification accuracy. To evaluate the
effectiveness of SG-CNNs for HSI classification, experiments have been conducted on three public
HSI datasets pretrained on HSIs from different sensors. SG-CNNs with different levels of complexity
were tested, and their classification results were compared with fine-tuned ShuffleNet2, ResNeXt,
and their original counterparts. The experimental results demonstrate that SG-CNNs can achieve
competitive classification performance when the amount of labeled data for training is poor, as well
as efficiently providing satisfying classification results.
Publisher
MDPICitation
Liu, Gao, Xiao, Qu, Zheng, Marinoni. Hyperspectral image classification based on a shuffled group convolutional neural network with transfer learning. Remote Sensing. 2020;12(11)Metadata
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