Title
Multi-modal data-driven motion planning and synthesis.
Abstract
We present a new approach for whole-body motion synthesis that is able to generate high-quality motions for challenging mobile-manipulation scenarios. Our approach decouples the problem in specialized locomotion and manipulation skills, and proposes a multi-modal planning scheme that explores the search space of each skill together with the possible transition points between skills. In order to achieve high-quality results the locomotion skill is designed to be fully data-driven, while manipulation skills can be algorithmic or data-driven according to data availability and the complexity of the environment. Our method is able to automatically generate complex motions with precise manipulation targets among obstacles and in coordination with locomotion.
Year
DOI
Venue
2015
10.1145/2822013.2822044
MIG
Field
DocType
Citations 
Motion planning,Computer vision,Motion capture,Data-driven,Data availability,Computer science,Character animation,Artificial intelligence,Motion synthesis,Modal
Conference
1
PageRank 
References 
Authors
0.35
21
2
Name
Order
Citations
PageRank
Mentar Mahmudi1101.56
Marcelo Kallmann263959.35