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Scene Identification based on
Concept Learning
Beatrice van Eden
- Part time PhD Student at the University of the Witwatersrand.
- Fulltime employee of the Council for Scientific and Industrial Research.
Index
• Broad problem statement
Give an overview of the research
I am busy with.
• Identify items in a scene 3D
Current work on the project.
• Continued work
Highlights of some of the reading
I did.
Broad Problem Statement
• How can we give a mobile robot the capability to
continuously and autonomously form concepts
of its environment?
Identify items in a scene 3D
• Marius Muja of University of British Columbia (2009)
• Manipulating tabletop objects: one of the main tasks of a robot in
a household environment
• Setting/cleaning the table
• Serving drinks
• Usual tabletop objects are difficult (no texture, transparent)
• Techniques based
on local features fail
• RANSAC – Random
sample consensus
(voting scheme to
find optima fitting
result)
Identify items in a scene 3D
• Grasping of objects requires precise object localization
• Bounding box around the object is not enough
• Know the grasp
• Extended the 2D chamfer matching approach to 3D
• Chamfer – calculates distance between two images
Identify items in a scene 3D
• Two stage approach
• Bottom-up object localization
• Determines probable object locations
• Table plane detection and removal
• Point cloud clustering
• Top down model fitting
• Determines exact object pose and identity
• Find the model with the best correspondence to the point cloud
• ICP-like (Iterative Closest Point) algorithm
Identify items in a scene 3D
• tabletop objects" package
• The 3D model fitter determines
• Object identity
• Object pose
• Grasp pose
• Object mesh - used in the planning stage for a more precise collision
map
• Integrated with
the planning pipeline
Continued work
• Backtracks a bit.
• Go back to the technical sections of papers I already read
• Go through the pseudo code of the work in this papers
• Test one or two more things I am unsure about in the 2D object
detection I showed you last week.
Thank you

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Wits presentation 3_02062015

  • 1. Scene Identification based on Concept Learning Beatrice van Eden - Part time PhD Student at the University of the Witwatersrand. - Fulltime employee of the Council for Scientific and Industrial Research.
  • 2. Index • Broad problem statement Give an overview of the research I am busy with. • Identify items in a scene 3D Current work on the project. • Continued work Highlights of some of the reading I did.
  • 3. Broad Problem Statement • How can we give a mobile robot the capability to continuously and autonomously form concepts of its environment?
  • 4. Identify items in a scene 3D • Marius Muja of University of British Columbia (2009) • Manipulating tabletop objects: one of the main tasks of a robot in a household environment • Setting/cleaning the table • Serving drinks • Usual tabletop objects are difficult (no texture, transparent) • Techniques based on local features fail • RANSAC – Random sample consensus (voting scheme to find optima fitting result)
  • 5. Identify items in a scene 3D • Grasping of objects requires precise object localization • Bounding box around the object is not enough • Know the grasp • Extended the 2D chamfer matching approach to 3D • Chamfer – calculates distance between two images
  • 6. Identify items in a scene 3D • Two stage approach • Bottom-up object localization • Determines probable object locations • Table plane detection and removal • Point cloud clustering • Top down model fitting • Determines exact object pose and identity • Find the model with the best correspondence to the point cloud • ICP-like (Iterative Closest Point) algorithm
  • 7. Identify items in a scene 3D • tabletop objects" package • The 3D model fitter determines • Object identity • Object pose • Grasp pose • Object mesh - used in the planning stage for a more precise collision map • Integrated with the planning pipeline
  • 8. Continued work • Backtracks a bit. • Go back to the technical sections of papers I already read • Go through the pseudo code of the work in this papers • Test one or two more things I am unsure about in the 2D object detection I showed you last week.