Vision-based 2.5D terrain modeling for humanoid locomotion
S. Kagami, Keiji Nishiwaki, James Kuffner, Kei Okada, Masayuki Inaba, H. Inoue
- Year
- 2004
- Citations
- 40
Abstract
We present an integrated humanoid locomotion and online terrain modeling system using stereo vision. From a 3D depth map, a 2.5D probabilistic description of the nearby terrain is generated. The depth map is calculated from a pair of stereo camera images, correlation-based localization is performed, and candidate planar walking surfaces are extracted. The results are used to update a probabilistic map of the terrain, which is input to an online footstep planning system. Experimental results are shown using the humanoid robot H7, which was designed as a research platform for intelligent humanoid robotics.
Keywords
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