论文标题
VC-NET:用于分割和可视化高度稀疏和嘈杂图像数据的深量组合网络
VC-Net: Deep Volume-Composition Networks for Segmentation and Visualization of Highly Sparse and Noisy Image Data
论文作者
论文摘要
我们工作的动机是提出一个新的可视化指导计算范式,以结合直接的3D体积处理和渲染的线索,以实现有效的3D探索,例如在体内提取和可视化微结构。但是,由于其高稀疏性,嘈杂性和复杂的拓扑变化,提取和可视化高保真3D容器结构仍然具有挑战性。在本文中,我们提出了一种端到端的深度学习方法VC-NET,以通过嵌入最大强度投影(MIP)生成的图像组成(MIP)来鲁棒提取3D微脉管系统,以增强性能。核心新颖性是自动利用体积可视化技术(MIP)来增强深度学习水平的3D数据探索。 MIP嵌入特征可以增强局部血管信号,并适应血管的几何可变性和可扩展性,这对于微血管跟踪至关重要。提出了一个多流卷积神经网络,以分别学习3D音量和2D MIP特征,然后通过将MIP特征未注射到3D体积嵌入空间中,从而探索其在关节体积组成嵌入空间中的相互依赖性。提出的框架可以更好地捕获小 /微容器并改善容器连接性。据我们所知,这是构建关节卷积嵌入空间的第一个深度学习框架,可以通过协同探索并协同探索并集成了基于体积渲染的2D投影和3D体积的计算容器概率。将实验结果与传统的3D血管分割方法和公共和真实患者(微)脑血管图像数据集进行了比较。我们的方法证明了强大的MR动脉造影和血管疾病诊断的潜力。
The motivation of our work is to present a new visualization-guided computing paradigm to combine direct 3D volume processing and volume rendered clues for effective 3D exploration such as extracting and visualizing microstructures in-vivo. However, it is still challenging to extract and visualize high fidelity 3D vessel structure due to its high sparseness, noisiness, and complex topology variations. In this paper, we present an end-to-end deep learning method, VC-Net, for robust extraction of 3D microvasculature through embedding the image composition, generated by maximum intensity projection (MIP), into 3D volume image learning to enhance the performance. The core novelty is to automatically leverage the volume visualization technique (MIP) to enhance the 3D data exploration at deep learning level. The MIP embedding features can enhance the local vessel signal and are adaptive to the geometric variability and scalability of vessels, which is crucial in microvascular tracking. A multi-stream convolutional neural network is proposed to learn the 3D volume and 2D MIP features respectively and then explore their inter-dependencies in a joint volume-composition embedding space by unprojecting the MIP features into 3D volume embedding space. The proposed framework can better capture small / micro vessels and improve vessel connectivity. To our knowledge, this is the first deep learning framework to construct a joint convolutional embedding space, where the computed vessel probabilities from volume rendering based 2D projection and 3D volume can be explored and integrated synergistically. Experimental results are compared with the traditional 3D vessel segmentation methods and the deep learning state-of-the-art on public and real patient (micro-)cerebrovascular image datasets. Our method demonstrates the potential in a powerful MR arteriogram and venogram diagnosis of vascular diseases.