Deep-learning optical flow for measuring velocity fields from experimental data†‡

IF 2.9 3区 化学 Q3 CHEMISTRY, PHYSICAL
Soft Matter Pub Date : 2024-08-23 DOI:10.1039/D4SM00483C
Phu N. Tran, Sattvic Ray, Linnea Lemma, Yunrui Li, Reef Sweeney, Aparna Baskaran, Zvonimir Dogic, Pengyu Hong and Michael F. Hagan
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引用次数: 0

Abstract

Deep learning-based optical flow (DLOF) extracts features in adjacent video frames with deep convolutional neural networks. It uses those features to estimate the inter-frame motions of objects. We evaluate the ability of optical flow to quantify the spontaneous flows of microtubule (MT)-based active nematics under different labeling conditions, and compare its performance to particle image velocimetry (PIV). We obtain flow velocity ground truths either by performing semi-automated particle tracking on samples with sparsely labeled filaments, or from passive tracer beads. DLOF produces more accurate velocity fields than PIV for densely labeled samples. PIV cannot reliably distinguish contrast variations at high densities, particularly along the nematic director. DLOF overcomes this limitation. For sparsely labeled samples, DLOF and PIV produce comparable results, but DLOF gives higher-resolution fields. Our work establishes DLOF as a versatile tool for measuring fluid flows in a broad class of active, soft, and biophysical systems.

Abstract Image

Abstract Image

从实验数据中测量速度场的深度学习光流。
基于深度学习的光流(DLOF)通过深度卷积神经网络提取相邻视频帧中的特征。它利用这些特征来估计物体的帧间运动。我们评估了光流在不同标记条件下量化基于微管(MT)的主动线粒体自发流动的能力,并将其性能与粒子图像测速(PIV)进行了比较。我们通过对具有稀疏标记细丝的样品进行半自动粒子跟踪,或通过被动示踪珠获得流速地面真值。对于标记密集的样品,DLOF 产生的速度场比 PIV 更精确。PIV 无法可靠地区分高密度下的对比度变化,尤其是沿向列导方向的对比度变化。DLOF 克服了这一限制。对于稀疏标记的样品,DLOF 和 PIV 的结果不相上下,但 DLOF 能提供更高分辨率的场。我们的工作证明,DLOF 是一种多功能工具,可用于测量各种活动、软体和生物物理系统中的流体流动。
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来源期刊
Soft Matter
Soft Matter 工程技术-材料科学:综合
CiteScore
6.00
自引率
5.90%
发文量
891
审稿时长
1.9 months
期刊介绍: Where physics meets chemistry meets biology for fundamental soft matter research.
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