Benjdira Bilel, M Ali Anas, Koubaa Anis, Ammar Adel, Boulila Wadii
Robotics and Internet-of-Things Laboratory, Prince Sultan University, Riyadh 11586, Saudi Arabia.
SE & ICT Laboratory, LR18ES44, ENICarthage, University of Carthage, Tunis 1054, Tunisia.
Cancers (Basel). 2024 Aug 23;16(17):2947. doi: 10.3390/cancers16172947.
Accurate skin diagnosis through end-user applications is important for early detection and cure of severe skin diseases. However, the low quality of dermoscopic images hampers this mission, especially with the presence of hair on these kinds of images. This paper introduces , a novel, self-supervised conditional diffusion model designed specifically for the automatic generation of hairless dermoscopic images to improve the quality of skin diagnosis applications. The current research contributes in three significant ways to the field of dermatologic imaging. First, we develop a customized diffusion model that adeptly differentiates between hair and skin features. Second, we pioneer a novel self-supervised learning strategy that is specifically tailored to optimize performance for hairless imaging. Third, we introduce a new dataset, named (DERMatologic Automatic HAIR Removal Dataset), that is designed to advance and benchmark research in this specialized domain. These contributions significantly enhance the clarity of dermoscopic images, improving the accuracy of skin diagnosis procedures. We elaborate on the architecture of and demonstrate its effective performance in removing hair while preserving critical details of skin lesions. Our results show an enhancement in the accuracy of skin lesion analysis when compared to existing techniques. Given its robust performance, holds considerable promise for broader application in medical image enhancement.
通过终端用户应用程序进行准确的皮肤诊断对于严重皮肤疾病的早期检测和治疗至关重要。然而,皮肤镜图像质量低下阻碍了这一任务,尤其是这类图像上存在毛发的情况。本文介绍了一种新颖的自监督条件扩散模型,该模型专门设计用于自动生成无毛皮肤镜图像,以提高皮肤诊断应用的质量。当前的研究在三个重要方面为皮肤病成像领域做出了贡献。首先,我们开发了一个定制的扩散模型,该模型能够巧妙地区分毛发和皮肤特征。其次,我们开创了一种新颖的自监督学习策略,该策略专门针对优化无毛成像的性能而设计。第三,我们引入了一个名为(皮肤病自动脱毛数据集)的新数据集,该数据集旨在推动和基准化这一专业领域的研究。这些贡献显著提高了皮肤镜图像的清晰度,提高了皮肤诊断程序的准确性。我们详细阐述了的架构,并展示了其在去除毛发同时保留皮肤病变关键细节方面的有效性能。我们的结果表明,与现有技术相比,皮肤病变分析的准确性有所提高。鉴于其强大的性能,在医学图像增强方面具有广阔的应用前景。