Presentation + Paper
14 May 2019 On data augmentation for segmenting hyperspectral images
Author Affiliations +
Abstract
Data augmentation is a popular technique which helps improve generalization capabilities of deep neural net- works, and can be perceived as implicit regularization. It is widely adopted in scenarios where acquiring high- quality training data is time-consuming and costly, with hyperspectral satellite imaging (HSI) being a real-life example. In this paper, we investigate data augmentation policies (exploiting various techniques, including generative adversarial networks applied to elaborate artificial HSI data) which help improve the generalization of deep neural networks (and other supervised learners) by increasing the representativeness of training sets. Our experimental study performed over HSI benchmarks showed that hyperspectral data augmentation boosts the classification accuracy of the models without sacrificing their real-time inference speed.
Conference Presentation
© (2019) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Jakub Nalepa, Michal Myller, Michal Kawulok, and Bogdan Smolka "On data augmentation for segmenting hyperspectral images", Proc. SPIE 10996, Real-Time Image Processing and Deep Learning 2019, 1099609 (14 May 2019); https://doi.org/10.1117/12.2519517
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CITATIONS
Cited by 1 scholarly publication.
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KEYWORDS
Data modeling

Hyperspectral imaging

Statistical modeling

Image segmentation

Principal component analysis

Neural networks

Convolutional neural networks

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