论文标题
T-NET:具有特定任务监督的学习功能表示生物医学图像分析
T-Net: Learning Feature Representation with Task-specific Supervision for Biomedical Image Analysis
论文作者
论文摘要
编码器 - 编码器网络被广泛用于从生物医学图像分析中的像素注释中学习深度特征表示。在这种结构下,性能非常依赖于编码网络实现的特征提取的有效性。但是,即使在各种任务中,很少有模型也考虑调整特征提取器的注意力。在本文中,我们提出了一种新颖的培训策略,通过根据不同的任务来调整特征提取器的注意,以进行有效的表示学习。具体而言,该框架(称为T-NET)由一个由特定于任务的注意图监督的编码网络组成,并具有借助学习功能以预测相应结果的后验网络。注意图是通过根据特定任务从像素式注释的转换获得的,该任务被用作正规化特征提取器的监督,以专注于识别对象的不同位置。为了显示我们方法的有效性,我们在两个不同的任务(即分割和本地化)上评估T-NET。三个公共数据集(Brats-17,Monuseg和Idrid)的广泛结果表明,我们提出的监督方法的有效性和效率,尤其是在常规编码编码网络上。
The encoder-decoder network is widely used to learn deep feature representations from pixel-wise annotations in biomedical image analysis. Under this structure, the performance profoundly relies on the effectiveness of feature extraction achieved by the encoding network. However, few models have considered adapting the attention of the feature extractor even in different kinds of tasks. In this paper, we propose a novel training strategy by adapting the attention of the feature extractor according to different tasks for effective representation learning. Specifically, the framework, named T-Net, consists of an encoding network supervised by task-specific attention maps and a posterior network that takes in the learned features to predict the corresponding results. The attention map is obtained by the transformation from pixel-wise annotations according to the specific task, which is used as the supervision to regularize the feature extractor to focus on different locations of the recognition object. To show the effectiveness of our method, we evaluate T-Net on two different tasks, i.e. , segmentation and localization. Extensive results on three public datasets (BraTS-17, MoNuSeg and IDRiD) have indicated the effectiveness and efficiency of our proposed supervision method, especially over the conventional encoding-decoding network.