As a basic task in computer vision, semantic segmentation can provide fundamental information for object detection and instance segmentation to help the artificial intelligence better understand real world. Since the proposal of fully convolutional neural network (FCNN), it has been widely used in semantic segmentation because of its high accuracy of pixel-wise classification as well as high precision of localization. In this paper, we apply several famous FCNN to brain tumor segmentation, making comparisons and adjusting network architectures to achieve better performance measured by metrics such as precision, recall, mean of intersection of union (mIoU) and dice score coefficient (DSC). The adjustments to the classic FCNN include adding more connections between convolutional layers, enlarging decoders after up sample layers and changing the way shallower layers' information is reused. Besides the structure modification, we also propose a new classifier with a hierarchical dice loss. Inspired by the containing relationship between classes, the loss function converts multiple classification to multiple binary classification in order to counteract the negative effect caused by imbalance data set. Massive experiments have been done on the training set and testing set in order to assess our refined fully convolutional neural networks and new types of loss function. Competitive figures prove they are more effective than their predecessors.
翻译:作为计算机视觉的一个基本任务,语义分解可以提供物体检测和试例分解的基本信息,帮助人工智能更好地了解现实世界。自从完全进化神经网络(FCNN)提议以来,由于精密的像素分类和高精度的本地化,它被广泛用于语义分解。在本文中,我们将一些著名的FCNN应用于脑肿瘤分解、比较和调整网络结构,以达到更好的性能,通过精确度、回溯、结合和狄氏分分系数的交叉值等衡量指标来衡量。对经典FCNN的调整包括增加共进层之间的连接,扩大采样层之后的分解器和改变浅层信息的再利用方式。除了结构修改外,我们还提出一个新的分层损失分解器。在包含各等级关系的情况下,损失函数将多重分类转换为多重二进制分类,以抵消失衡数据组合造成的负面影响。在培训设置和测试前期数据类型方面进行了大规模实验,其升级的功能比我们更能评估。