论文标题
稀疏编码驱动的深层决策树合奏,用于数字病理图像中的核分割
Sparse Coding Driven Deep Decision Tree Ensembles for Nuclear Segmentation in Digital Pathology Images
论文作者
论文摘要
在本文中,我们提出了一种易于训练但功能强大的表示学习方法,在数字病理图像分割任务中,具有高度竞争性的深层神经网络的性能。该方法称为稀疏编码驱动的深层决策树,我们缩写为SCD2TE,为表示学习提供了新的观点。我们探讨了基于非差异的成对模块堆叠多个层的可能性,并生成具有特征地图重复使用和端到端密集学习的特征的密集串联体系结构。在此体系结构下,快速卷积稀疏编码用于从每一层输出中提取多层次特征。通过这种方式,通过学习一系列决策树的合奏来整合丰富的图像外观模型以及更多的上下文信息。所有前面层的外观和高级上下文特征通过将它们串联成馈线作为输入而无缝结合,这又使后续层的输出更加准确,并且整个模型都可以效率地训练。与深度神经网络相比,我们提出的SCD2TE不需要后传播计算,而取决于较少的超参数。 SCD2TE能够以层次的方式进行快速的端到端像素训练。我们通过在多疾病的状态和多器官数据集上评估分割技术的优越性,在该数据集中获得了持续更高的性能,以与几种最先进的深度学习方法进行比较,例如卷积神经网络(CNN),完全卷积网络(FCN)(FCN)等。
In this paper, we propose an easily trained yet powerful representation learning approach with performance highly competitive to deep neural networks in a digital pathology image segmentation task. The method, called sparse coding driven deep decision tree ensembles that we abbreviate as ScD2TE, provides a new perspective on representation learning. We explore the possibility of stacking several layers based on non-differentiable pairwise modules and generate a densely concatenated architecture holding the characteristics of feature map reuse and end-to-end dense learning. Under this architecture, fast convolutional sparse coding is used to extract multi-level features from the output of each layer. In this way, rich image appearance models together with more contextual information are integrated by learning a series of decision tree ensembles. The appearance and the high-level context features of all the previous layers are seamlessly combined by concatenating them to feed-forward as input, which in turn makes the outputs of subsequent layers more accurate and the whole model efficient to train. Compared with deep neural networks, our proposed ScD2TE does not require back-propagation computation and depends on less hyper-parameters. ScD2TE is able to achieve a fast end-to-end pixel-wise training in a layer-wise manner. We demonstrated the superiority of our segmentation technique by evaluating it on the multi-disease state and multi-organ dataset where consistently higher performances were obtained for comparison against several state-of-the-art deep learning methods such as convolutional neural networks (CNN), fully convolutional networks (FCN), etc.