Validating markerless pose estimation with 3D X-ray radiography.
Dalton D MooreJeffrey D WalkerJason N MacLeanNicholas G HatsopoulosPublished in: The Journal of experimental biology (2022)
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.
Keyphrases
- high resolution
- deep learning
- dual energy
- endothelial cells
- image quality
- high speed
- depressive symptoms
- genome wide
- electronic health record
- cone beam computed tomography
- computed tomography
- machine learning
- big data
- single cell
- dna methylation
- soft tissue
- artificial intelligence
- magnetic resonance
- mass spectrometry
- wound healing
- magnetic resonance imaging
- gene expression
- data analysis