论文标题
使用一致的感知生成对抗网络进行脑冲程病变细分
Brain Stroke Lesion Segmentation Using Consistent Perception Generative Adversarial Network
论文作者
论文摘要
最先进的深度学习方法在细分任务中表现出了令人印象深刻的表现。但是,这些方法的成功取决于大量手动标记的面具,这些面具昂贵且耗时。在这项工作中,提出了一种新型的一致感知产生的对抗网络(CPGAN),用于半监督的中风病变分割。提出的CPGAN可以减少对完全标记的样品的依赖。具体而言,相似性连接模块(SCM)旨在捕获多尺度功能的信息。所提出的SCM可以通过加权总和选择性地在每个位置汇总特征。此外,将一致的感知策略引入了提出的模型中,以增强未标记数据的脑冲程病变预测的影响。此外,构建了助理网络,以鼓励歧视者学习有意义的特征表示,这些特征表示在训练阶段经常被遗忘。助理网络和歧视者被用来共同决定分割结果是真实还是假货。对中风后病变的解剖学示踪(地图集),对CPGAN进行了评估。实验结果表明,所提出的网络可实现出色的分割性能。在半监督的分割任务中,仅使用五分之二的标记样品的CPGAN优于使用完整标记的样品的某些方法。
The state-of-the-art deep learning methods have demonstrated impressive performance in segmentation tasks. However, the success of these methods depends on a large amount of manually labeled masks, which are expensive and time-consuming to be collected. In this work, a novel Consistent PerceptionGenerative Adversarial Network (CPGAN) is proposed for semi-supervised stroke lesion segmentation. The proposed CPGAN can reduce the reliance on fully labeled samples. Specifically, A similarity connection module (SCM) is designed to capture the information of multi-scale features. The proposed SCM can selectively aggregate the features at each position by a weighted sum. Moreover, a consistent perception strategy is introduced into the proposed model to enhance the effect of brain stroke lesion prediction for the unlabeled data. Furthermore, an assistant network is constructed to encourage the discriminator to learn meaningful feature representations which are often forgotten during training stage. The assistant network and the discriminator are employed to jointly decide whether the segmentation results are real or fake. The CPGAN was evaluated on the Anatomical Tracings of Lesions After Stroke (ATLAS). The experimental results demonstrate that the proposed network achieves superior segmentation performance. In semi-supervised segmentation task, the proposed CPGAN using only two-fifths of labeled samples outperforms some approaches using full labeled samples.