论文标题
元损坏的像素挖掘用于医疗图像细分
Meta Corrupted Pixels Mining for Medical Image Segmentation
论文作者
论文摘要
深度神经网络在一系列医学图像分析任务中取得了令人满意的表现。但是,对深度神经网络的培训需要大量具有高质量注释的样本。在医学图像细分中,获取精确的像素级注释非常费力且昂贵。为了培训可能损坏注释的数据集上的深层细分模型,我们提出了一种基于简单的元掩码网络的新型元损坏的像素挖掘(MCPM)方法。我们的方法针对的是自动估算一个加权图,以评估每个像素在分割网络学习中的重要性。将预测分割结果的损耗值图视为输入的元面膜网络,能够识别损坏的层并分配小重量。采用了另一种算法来同时训练分割网络和元面膜网络。对LIDC-IDRI和LITS数据集的广泛实验结果表明,我们的方法优于设计用于应对损坏注释的最先进方法。
Deep neural networks have achieved satisfactory performance in piles of medical image analysis tasks. However the training of deep neural network requires a large amount of samples with high-quality annotations. In medical image segmentation, it is very laborious and expensive to acquire precise pixel-level annotations. Aiming at training deep segmentation models on datasets with probably corrupted annotations, we propose a novel Meta Corrupted Pixels Mining (MCPM) method based on a simple meta mask network. Our method is targeted at automatically estimate a weighting map to evaluate the importance of every pixel in the learning of segmentation network. The meta mask network which regards the loss value map of the predicted segmentation results as input, is capable of identifying out corrupted layers and allocating small weights to them. An alternative algorithm is adopted to train the segmentation network and the meta mask network, simultaneously. Extensive experimental results on LIDC-IDRI and LiTS datasets show that our method outperforms state-of-the-art approaches which are devised for coping with corrupted annotations.