论文标题
GOTFLOW3D:在粒子跟踪中学习3D流动运动的循环图最佳传输
GotFlow3D: Recurrent Graph Optimal Transport for Learning 3D Flow Motion in Particle Tracking
论文作者
论文摘要
流动可视化技术(例如粒子跟踪速度法(PTV))广泛用于理解来自自然和工业过程的全渗透三维(3D)湍流。尽管3D采集技术取得了进步,但粒子跟踪中开发的运动估计算法仍然是大粒子位移,密集粒子分布和高计算成本的巨大挑战。通过引入一个基于复发图最佳传输的新型深神经网络,称为GotFlow3D,我们提出了一种端到端解决方案,以从双帧粒子集中学习3D流体流动运动。所提出的网络在几何和特征空间中构造了两个图,并通过从图神经网络中学到的融合固有和外在特征进一步丰富了原始粒子表示。随后将提取的深度特征用于制定最佳的传输计划,以表明粒子对的对应关系,然后迭代和自适应地检索它们以指导复发流学习。实验评估,包括对现实世界实验的数值实验和验证的评估,表明,拟议的GOTFLOW3D可以针对最近开发的场景流量学习者和粒子跟踪算法,具有令人印象深刻的精确性,鲁棒性,稳健性和普遍性能力,可以为较大的物理动力学提供更深入的洞察力。
Flow visualization technologies such as particle tracking velocimetry (PTV) are broadly used in understanding the all-pervasiveness three-dimensional (3D) turbulent flow from nature and industrial processes. Despite the advances in 3D acquisition techniques, the developed motion estimation algorithms in particle tracking remain great challenges of large particle displacements, dense particle distributions and high computational cost. By introducing a novel deep neural network based on recurrent Graph Optimal Transport, called GotFlow3D, we present an end-to-end solution to learn the 3D fluid flow motion from double-frame particle sets. The proposed network constructs two graphs in the geometric and feature space and further enriches the original particle representations with the fused intrinsic and extrinsic features learnt from a graph neural network. The extracted deep features are subsequently utilized to make optimal transport plans indicating the correspondences of particle pairs, which are then iteratively and adaptively retrieved to guide the recurrent flow learning. Experimental evaluations, including assessments on numerical experiments and validations on real-world experiments, demonstrate that the proposed GotFlow3D achieves state-of-the-art performance against both recently-developed scene flow learners and particle tracking algorithms, with impressive accuracy, robustness and generalization ability, which can provide deeper insight into the complex dynamics of broad physical and biological systems.