4.2 Article

Burn Images Segmentation Based on Burn-GAN

Journal

JOURNAL OF BURN CARE & RESEARCH
Volume 42, Issue 4, Pages 755-762

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/jbcr/iraa208

Keywords

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Funding

  1. National Key R&D Program of China [2018YFB2100500]
  2. National Science Foundation of China [61772379]

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This study proposes an advanced burn image generation framework called Burn-GAN, which automatically generates annotated burn image datasets to improve segmentation accuracy. The framework utilizes various techniques to create human surface scenes, including burn wounds, and acquires annotated datasets through accurate data transformation. In experiments, the framework achieved good segmentation results, with precision at 90.75%, PA at 96.88%, and improved DC from 84.5 to 89.3%.
Burn injuries are severe problems for human. Accurate segmentation for burn wounds in patient surface can improve the calculation precision of %TBSA (total burn surface area), which is helpful in determining treatment plan. Recently, deep learning methods have been used to automatically segment wounds. However, owing to the difficulty of collecting relevant images as training data, those methods cannot often achieve fine segmentation. A burn image-generating framework is proposed in this paper to generate burn image datasets with annotations automatically. Those datasets can be used to increase segmentation accuracy and save the time of annotating. This paper brings forward an advanced burn image generation framework called Burn-GAN. The framework consists of four parts: Generating burn wounds based on the mainstream Style-GAN network; Fusing wounds with human skins by Color Adjusted Seamless Cloning (CASC); Simulating real burn scene in three-dimensional space; Acquiring annotated dataset through three-dimensional and local burn coordinates transformation. Using this framework, a large variety of burn image datasets can be obtained. Finally, standard metrics like precision, Pixel Accuracy (PA) and Dice Coefficient (DC) were utilized to assess the framework. With nonsaturating loss with R-2 regularization (NSLR2) and CASC, the segmentation network gains the best results. The framework achieved precision at 90.75%, PA at 96.88% and improved the DC from 84.5 to 89.3%. A burn data-generating framework have been built to improve the segmentation network, which can automatically segment burn images with higher accuracy and less time than traditional methods.

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