Synthesis of Human Motion Using Kalman Filter
نویسندگان
چکیده
This paper is concerned with the post-processing of motion-captured data. The post-processing is needed for several reasons: jerky motions due to sensor noise, violation of body constraints such as extraneous joint D.O.Fs, generation of new motion by editing existing motion data, and application of a motion to diierent character models. In this paper, the process of generating animated motion is viewed as a dynamic system, which takes the captured motion as input. Within a single Kalman lter framework, we were able to handle the following problems eeectively: satisfaction of physical constraints inherent to human body, user-speciied kinematic constraints, motion transition, and noise reduction.
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