Spectral Data Augmentation Techniques to quantify Lung Pathology from
CT-images
- URL: http://arxiv.org/abs/2004.11989v1
- Date: Fri, 24 Apr 2020 20:57:50 GMT
- Title: Spectral Data Augmentation Techniques to quantify Lung Pathology from
CT-images
- Authors: Subhradeep Kayal and Florian Dubost and Harm A. W. M. Tiddens and
Marleen de Bruijne
- Abstract summary: We propose the use of spectral techniques for data augmentation, using the discrete cosine and wavelet transforms.
We empirically evaluate our approaches on a CT texture analysis task to detect abnormal lung-tissue in patients with cystic fibrosis.
- Score: 6.283778222138156
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Data augmentation is of paramount importance in biomedical image processing
tasks, characterized by inadequate amounts of labelled data, to best use all of
the data that is present. In-use techniques range from intensity
transformations and elastic deformations, to linearly combining existing data
points to make new ones. In this work, we propose the use of spectral
techniques for data augmentation, using the discrete cosine and wavelet
transforms. We empirically evaluate our approaches on a CT texture analysis
task to detect abnormal lung-tissue in patients with cystic fibrosis. Empirical
experiments show that the proposed spectral methods perform favourably as
compared to the existing methods. When used in combination with existing
methods, our proposed approach can increase the relative minor class
segmentation performance by 44.1% over a simple replication baseline.
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