Segmenting skin lesions from dermoscopic images is essential for diagnosing skin cancer. But the automatic segmentation of these lesions is complicated due to the poor contrast between the background and the lesion, image artifacts, and unclear lesion boundaries. In this work, we present a deep learning model for the segmentation of skin lesions from dermoscopic images. To deal with the challenges of skin lesion characteristics, we designed a multi-scale feature extraction module for extracting the discriminative features. Further in this work, two attention mechanisms are developed to refine the post-upsampled features and the features extracted by the encoder. This model is evaluated using the ISIC2018 and ISBI2017 datasets. The proposed model outperformed all the existing works and the top-ranked models in two competitions.
翻译:对皮肤癌进行诊断的关键在于通过脱温图像分割皮肤损伤。 但是,由于背景与损伤、图像文物和模糊的损伤界限之间的对比差,这些损伤的自动分割十分复杂。 在这项工作中,我们提出了一个从脱温图像中分离皮肤损伤的深层学习模型。为了应对皮肤损伤特征的挑战,我们设计了一个用于提取歧视特征的多尺度特征提取模块。此外,在这项工作中,还开发了两个关注机制来完善添加后的特征和由编码器提取的特征。这个模型是使用ISIC2018和ISSBI2017数据集进行评估的。拟议的模型在两次竞赛中超越了所有现有的工程和最高级模型。