“Evaluating the Quality of a Synthesized Motion With the Fréchet Motion Distance” by Maiorca, Yoon and Dutoit
Conference:
Type(s):
Entry Number: 09
Title:
- Evaluating the Quality of a Synthesized Motion With the Fréchet Motion Distance
Presenter(s)/Author(s):
References:
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