A multi-stage GAN for multi-organ chest X-ray image generation and
segmentation
- URL: http://arxiv.org/abs/2106.05132v1
- Date: Wed, 9 Jun 2021 15:15:19 GMT
- Title: A multi-stage GAN for multi-organ chest X-ray image generation and
segmentation
- Authors: Giorgio Ciano, Paolo Andreini, Tommaso Mazzierli, Monica Bianchini and
Franco Scarselli
- Abstract summary: We present a novel multi-stage generation algorithm based on Generative Adrial Networks (GANs)
Unlike other approaches, generation occurs in several stages, which simplifies the procedure and allows it to be used on very small datasets.
The multistage approach achieves state-of-the-artversa and, when very few images are used to train the GANs, outperforms the corresponding single-stage approach.
- Score: 2.7561479348365734
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multi-organ segmentation of X-ray images is of fundamental importance for
computer aided diagnosis systems. However, the most advanced semantic
segmentation methods rely on deep learning and require a huge amount of labeled
images, which are rarely available due to both the high cost of human resources
and the time required for labeling. In this paper, we present a novel
multi-stage generation algorithm based on Generative Adversarial Networks
(GANs) that can produce synthetic images along with their semantic labels and
can be used for data augmentation. The main feature of the method is that,
unlike other approaches, generation occurs in several stages, which simplifies
the procedure and allows it to be used on very small datasets. The method has
been evaluated on the segmentation of chest radiographic images, showing
promising results. The multistage approach achieves state-of-the-art and, when
very few images are used to train the GANs, outperforms the corresponding
single-stage approach.
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