The process of removing occluding hair has a relevant role in the early and accurate diagnosis of skin cancer. It consists of detecting hairs and restore the texture below them, which is sporadically occluded. In this work, we present a model based on convolutional neural networks for hair removal in dermoscopic images. During the network's training, we use a combined loss function to improve the restoration ability of the proposed model. In order to train the CNN and to quantitatively validate their performance, we simulate the presence of skin hair in hairless images extracted from publicly known datasets such as the PH2, dermquest, dermis, EDRA2002, and the ISIC Data Archive. As far as we know, there is no other hair removal method based on deep learning. Thus, we compare our results with six state-of-the-art algorithms based on traditional computer vision techniques by means of similarity measures that compare the reference hairless image and the one with hair simulated. Finally, a statistical test is used to compare the methods. Both qualitative and quantitative results demonstrate the effectiveness of our network.
翻译:在皮肤癌的早期和准确诊断过程中,摘除隐性毛发的过程具有相关作用,它包括检测毛发并恢复其下部的纹理,这是零星隐蔽的。在这项工作中,我们展示了一个模型,以进化神经网络为基础,在脱发图像中摘发。在网络培训期间,我们使用一个合并损失函数,以提高拟议模型的恢复能力。为了培训CNN并定量验证其性能,我们模拟从PH2、皮肤、皮肤、EMRA2002和ISIC数据档案馆等公开数据集中提取的无毛图像中存在。我们知道,没有其他基于深层学习的摘发方法。因此,我们用类似计量方法,将我们的结果与基于传统计算机视觉技术的六种最新算法进行比较,将参考无毛图像与模拟的光发图像进行比较。最后,我们用统计测试来比较方法。质量和定量结果都表明了我们的网络的有效性。