Joint direct estimation of 3d geometry and 3d motion using spatio temporal gradients
Metadatos
Mostrar el registro completo del ítemEditorial
Elsevier
Materia
3D motion Egomotion Structure from motion Normal flow
Fecha
2021Referencia bibliográfica
Published version: Barranco Expósito, Francisco et al. Joint direct estimation of 3d geometry and 3d motion using spatio temporal gradients. Pattern Recognition Volume 113, May 2021, 107759. https://doi.org/10.1016/j.patcog.2020.107759
Patrocinador
Juan de la Cierva grant (IJCI-2014-21376); EU Project FitOptiVis 783162; MINECO APCIN PCI2018‐093184; Research Network RED2018-102511-T; National Science Foundation SMA 1540917, CNS 1544797Resumen
Conventional image motion based structure from motion methods first compute optical flow, then solve for the 3D
motion parameters based on the epipolar constraint, and finally recover the 3D geometry of the scene. However, errors
in optical flow due to regularization can lead to large errors in 3D motion and structure. This paper investigates whether
performance and consistency can be improved by avoiding optical flow estimation in the early stages of the structure
from motion pipeline, and it proposes a new direct method based on image gradients (normal flow) only. The main idea
lies in a reformulation of the positive-depth constraint, which allows the use of well-known minimization techniques
to solve for 3D motion. The 3D motion estimate is then refined and structure estimated adding a regularization based
on depth. Experimental comparisons on standard synthetic datasets and the real-world driving benchmark dataset
KITTI using three different optic flow algorithms show that the method achieves better accuracy in all but one case.
Furthermore, it outperforms existing normal flow based 3D motion estimation techniques. Finally, the recovered 3D
geometry is shown to be also very accurate.