Efficient generation of motion transitions using space time constraints

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Abstract

This paper describes the application of space time constraints to creating transitions between segments of human body motion. The motion transition generation uses a combination of spacetime constraints and inverse kinematic constraints to generate seamless and dynamically plausible transitions between motion segments. We use a fast recursive dynamics formulation which makes it possible to use spacetime constraints on systems with many degrees of freedom, such as human figures. The system uses an interpreter of a motion expression language to allow the user to manipulatemotion data, break it into pieces, and reassemble it into new,more complex, motions. We have successfully used the system to create basis motions, cyclic data, and seamlessmotion transitions on a human body model with 44 degrees of freedom.

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CITATION STYLE

APA

Rose, C., Guenter, B., Bodenheimer, B., & Cohen, M. F. (1996). Efficient generation of motion transitions using space time constraints. In Proceedings of the 23rd Annual Conference on Computer Graphics and Interactive Techniques, SIGGRAPH 1996 (pp. 147–154). Association for Computing Machinery, Inc. https://doi.org/10.1145/237170.237229

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