Self-supervised learning is emerging as an effective substitute for transfer learning from large datasets. In this work, we use kidney segmentation to explore this idea. The anatomical asymmetry of kidneys is leveraged to define an effective proxy task for kidney segmentation via self-supervised learning. A siamese convolutional neural network (CNN) is used to classify a given pair of kidney sections from CT volumes as being kidneys of the same or different sides. This knowledge is then transferred for the segmentation of kidneys using another deep CNN using one branch of the siamese CNN as the encoder for the segmentation network. Evaluation results on a publicly available dataset containing computed tomography (CT) scans of the abdominal region shows that a boost in performance and fast convergence can be had relative to a network trained conventionally from scratch. This is notable given that no additional data/expensive annotations or augmentation were used in training.
翻译:自我监督的学习正在成为从大型数据集中转移学习的有效替代物。 在这项工作中,我们使用肾分割法来探索这一想法。 肾的解剖不对称通过自我监督的学习来界定肾分离的有效代理任务。 使用一个自监督的神经神经网络(CNN)来将一对特定肾部分从CT体积中分类为同一或不同侧面的肾脏。 然后,利用另一个深度CNN, 使用Siamese CNN的一个分支作为分解网络的编码器, 将这一知识用于肾的分离。 对含有对腹部区域进行计算断层扫描的公开数据集的评估结果显示, 性能和快速趋同可以比常规从刮伤训练的网络有助作用。 值得注意的是, 在培训中没有使用额外的数据/ 显性说明或增强性说明 。