Cutting-Splicing data augmentation: A novel technology for medical image segmentation
Lianting Hu, Huiying Liang, Jiajie Tang, Xin Li, Li Huang, Long Lu

TL;DR
This paper introduces Cutting-Splicing Data Augmentation (CS-DA), a simple, robust method tailored for medical image segmentation that enhances small dataset performance by splicing image components without noise.
Contribution
The paper proposes a novel, layout-preserving data augmentation technique specifically designed for medical images, improving segmentation accuracy especially with limited data.
Findings
CS-DA improves segmentation performance on small datasets.
Combining CS-DA with classical methods yields better results.
The method is simple, robust, and preserves image layout.
Abstract
Background: Medical images are more difficult to acquire and annotate than natural images, which results in data augmentation technologies often being used in medical image segmentation tasks. Most data augmentation technologies used in medical segmentation were originally developed on natural images and do not take into account the characteristic that the overall layout of medical images is standard and fixed. Methods: Based on the characteristics of medical images, we developed the cutting-splicing data augmentation (CS-DA) method, a novel data augmentation technology for medical image segmentation. CS-DA augments the dataset by splicing different position components cut from different original medical images into a new image. The characteristics of the medical image result in the new image having the same layout as and similar appearance to the original image. Compared with classical…
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Taxonomy
TopicsAdvanced Neural Network Applications · Medical Image Segmentation Techniques · Advanced Image and Video Retrieval Techniques
