Polyp- ddpm:基于扩散的语义Polyp合成增强分割。

Zolnamar Dorjsembe, Hsing-Kuo Pao, Furen Xiao
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引用次数: 0

摘要

本研究介绍了一种基于扩散的方法Polyp-DDPM,该方法用于生成假面条件下息肉的逼真图像,旨在增强胃肠道息肉的分割。我们的方法解决了与医学图像相关的数据限制、高注释成本和隐私问题的挑战。通过对分割掩模(代表异常区域的二进制掩模)的扩散模型进行调节,poly - ddpm在图像质量(实现fr起始距离(FID)得分为78.47,而高于95.82)和分割性能(实现交集比(IoU)为0.7156,而基线模型合成图像低于0.6828,真实数据为0.7067)方面优于最先进的方法。我们的方法生成了一个高质量的、多样化的合成数据集用于训练,从而增强了息肉分割模型与真实图像的可比性,并提供了更大的数据增强能力来改进分割模型。poly -ddpm的源代码和预训练的权重可在https://github.com/mobaidoctor/polyp-ddpm上公开获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Polyp-DDPM: Diffusion-Based Semantic Polyp Synthesis for Enhanced Segmentation.

This study introduces Polyp-DDPM, a diffusion-based method for generating realistic images of polyps conditioned on masks, aimed at enhancing the segmentation of gastrointestinal (GI) tract polyps. Our approach addresses the challenges of data limitations, high annotation costs, and privacy concerns associated with medical images. By conditioning the diffusion model on segmentation masks-binary masks that represent abnormal areas-Polyp-DDPM outperforms state-of-the-art methods in terms of image quality (achieving a Fréchet Inception Distance (FID) score of 78.47, compared to scores above 95.82) and segmentation performance (achieving an Intersection over Union (IoU) of 0.7156, versus less than 0.6828 for synthetic images from baseline models and 0.7067 for real data). Our method generates a high-quality, diverse synthetic dataset for training, thereby enhancing polyp segmentation models to be comparable with real images and offering greater data augmentation capabilities to improve segmentation models. The source code and pretrained weights for Polyp-DDPM are made publicly available at https://github.com/mobaidoctor/polyp-ddpm.

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