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LC-GAN: Image-to-image Translation Based on Generative Adversarial Network for Endoscopic Images

机译:LC-GaN:基于生成对抗网络的图像到图像的图像到图像 - 图像 - 图像转换

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Intelligent vision is appealing in computer-assisted and robotic surgeries. Vision-based analysis with deep learning usually requires large labeled datasets, but manual data labeling is expensive and time-consuming in medical problems. We investigate a novel cross-domain strategy to reduce the need for manual data labeling by proposing an image-to-image translation model live-cadaver GAN (LC-GAN) based on generative adversarial networks (GANs). We consider a situation when a labeled cadaveric surgery dataset is available while the task is instrument segmentation on an unlabeled live surgery dataset. We train LC-GAN to learn the mappings between the cadaveric and live images. For live image segmentation, we first translate the live images to fake-cadaveric images with LC-GAN and then perform segmentation on the fake-cadaveric images with models trained on the real cadaveric dataset. The proposed method fully makes use of the labeled cadaveric dataset for live image segmentation without the need to label the live dataset. LC-GAN has two generators with different architectures that leverage the deep feature representation learned from the cadaveric image based segmentation task. Moreover, we propose the structural similarity loss and segmentation consistency loss to improve the semantic consistency during translation. Our model achieves better image-to-image translation and leads to improved segmentation performance in the proposed cross-domain segmentation task.
机译:智能愿景在计算机辅助和机器人手术中吸引人。深度学习的基于视觉分析通常需要大量标记的数据集,但手动数据标签在医学问题中昂贵且耗时。我们调查一种新颖的跨域策略,以通过提出基于生成的对抗网络(GANS)的图像到图像翻译模型Live-Cadaver GaN(LC-GaN)来减少手动数据标签的需求。当任务是未标记的实时手术数据集时,我们考虑当标记的尸体手术数据集提供标记的尸体手术数据集时。我们训练LC-GaN学习Cadaveric和实时图像之间的映射。对于实时图像分割,我们首先将实时图像与LC-GaN翻译成假CadaVeric图像,然后在具有在真正的Cadaveric数据集上培训的模型执行分段。该方法充分利用标记的Cadaveric数据集用于实时图像分段,而无需标记实时数据集。 LC-GaN有两个具有不同架构的发电机,它利用了从基于Cadaveric图像的分段任务中学到的深度特征表示。此外,我们提出了结构相似性损失和分割一致性损失,以改善翻译过程中的语义一致性。我们的模型实现了更好的图像到图像转换,并导致提高了所提出的跨域分段任务中的分段性能。

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