Deep learning has played a major role in the interpretation of dermoscopic images for detecting skin defects and abnormalities. However, current deep learning solutions for dermatological lesion analysis are typically limited in providing probabilistic predictions which highlights the importance of concerning uncertainties. This concept of uncertainty can provide a confidence level for each feature which prevents overconfident predictions with poor generalization on unseen data. In this paper, we propose an overall framework that jointly considers dermatological classification and uncertainty estimation together. The estimated confidence of each feature to avoid uncertain feature and undesirable shift, which are caused by environmental difference of input image, in the latent space is pooled from confidence network. Our qualitative results show that modeling uncertainties not only helps to quantify model confidence for each prediction but also helps classification layers to focus on confident features, therefore, improving the accuracy for dermatological lesion classification. We demonstrate the potential of the proposed approach in two state-of-the-art dermoscopic datasets (ISIC 2018 and ISIC 2019).
翻译:深层学习在解释皮肤缺陷和异常现象的脱温图像方面发挥了重要作用,然而,目前皮肤损伤分析的深层学习解决方案通常有限,难以提供概率预测,突出不确定性的重要性。这种不确定性概念可以为每个特征提供信任度,防止对不可见数据过于自信的预测,对不可见数据缺乏概括性。在本文件中,我们提出了一个总体框架,共同考虑皮肤分类和不确定性估计。每种特征对于避免因输入图像的环境差异造成的不确定特征和不可取变化的估计信心来自信任网络。我们的质量结果表明,建模不确定性不仅有助于量化每种预测的模型信任度,而且有助于分类层侧重于信心特征,从而提高皮肤损伤分类的准确性。我们展示了两种最先进的脱热层数据集(ISIC 2018和ISIC 2019)的拟议方法的潜力。