Home
Uni-Logo
 

SF2SE3: Clustering Scene Flow into SE (3)-Motions via Proposal and Selection

German Conference on Pattern Recognition (GCPR), 2022
Abstract: We propose SF2SE3, a novel approach to estimate scene dynamics in form of a segmentation into independently moving rigid objects and their SE(3)-motions. SF2SE3 operates on two consecutive stereo or RGB-D images. First, noisy scene flow is obtained by application of existing optical flow and depth estimation algorithms. SF2SE3 then iteratively (1) samples pixel sets to compute SE(3)-motion proposals, and (2) selects the best SE(3)-motion proposal with respect to a maximum coverage formulation. Finally, objects are formed by assigning pixels uniquely to the selected SE(3)-motions based on consistency with the input scene flow and spatial proximity. The main novelties are a more informed strategy for the sampling of motion proposals and a maximum coverage formulation for the proposal selection. We conduct evaluations on multiple datasets regarding application of SF2SE3 for scene flow estimation, object segmentation and visual odometry. SF2SE3 performs on par with the state of the art for scene flow estimation and is more accurate for segmentation and odometry.
Paper Downloads

Images and movies

 

BibTex reference

@InProceedings{SB22,
  author       = "L. Sommer and P. Schr{\"o}ppel and T.Brox",
  title        = "SF2SE3: Clustering Scene Flow into SE (3)-Motions via Proposal and Selection",
  booktitle    = "German Conference on Pattern Recognition (GCPR)",
  month        = " ",
  year         = "2022",
  keywords     = "scene flow, scene dynamics, dynamic object segmentation, motion estimation",
  url          = "http://lmbweb.informatik.uni-freiburg.de/Publications/2022/SB22"
}

Other publications in the database