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Research Article

Semantic segmentation sample augmentation based on simulated scene generation—case study on dock extraction from high spatial resolution imagery

, , , , &
Pages 4961-4984 | Received 07 Dec 2020, Accepted 28 Feb 2021, Published online: 05 Apr 2021
 

ABSTRACT

Deep learning-based semantic segmentation methods, such as fully convolutional networks (FCNs), are state-of-the-art techniques for object extraction from high spatial resolution images. However, collecting massive scene-formed training samples typically required in FCNs is time-consuming and labour-intensive. A suit of automatic sample augmentation schemes based on simulated scene generation is proposed in this study to reduce the manual workload. Proposed schemes include style transfer, target embedding, and mixed modes by utilizing techniques, such as texture transfer, image inpainting, and region-line primitive association framework, which automatically expand the sample set on the basis of a small number of real samples. Dock extraction experiments using UNet are conducted on China’s GaoFen-2 imagery with expanded sample sets. Results showed that the proposed schemes can successfully generate sufficient simulation samples, increase sample diversity, and subsequently improve semantic segmentation accuracy. Compared with the results that use the original real sample set, measures of F1-score (F1) and intersection over union (IoU) of dock extraction accuracy demonstrate a maximum improvement of 20.53% and 23.01%, respectively, after sample augmentation.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

This work is jointly supported by the National Key Research and Development Program of China [2017YFB0503902] and the National Natural Science Foundation of China [42071301, 41671341] .

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