| Literature DB >> 35466360 |
Dalton D Moore1, Jeffrey D Walker2, Jason N MacLean1,3,4, Nicholas G Hatsopoulos1,2,4.
Abstract
To reveal the neurophysiological underpinnings of natural movement, neural recordings must be paired with accurate tracking of limbs and postures. Here, we evaluated the accuracy of DeepLabCut (DLC), a deep learning markerless motion capture approach, by comparing it with a 3D X-ray video radiography system that tracks markers placed under the skin (XROMM). We recorded behavioral data simultaneously with XROMM and RGB video as marmosets foraged and reconstructed 3D kinematics in a common coordinate system. We used the toolkit Anipose to filter and triangulate DLC trajectories of 11 markers on the forelimb and torso and found a low median error (0.228 cm) between the two modalities corresponding to 2.0% of the range of motion. For studies allowing this relatively small error, DLC and similar markerless pose estimation tools enable the study of increasingly naturalistic behaviors in many fields including non-human primate motor control.Entities:
Keywords: Anipose; DeepLabCut; Markerless tracking; Marmoset; Pose estimation; XROMM
Mesh:
Year: 2022 PMID: 35466360 PMCID: PMC9163444 DOI: 10.1242/jeb.243998
Source DB: PubMed Journal: J Exp Biol ISSN: 0022-0949 Impact factor: 3.308