Database techniques with motion capture

Motion-capture databases are now large, varied, and widely used. This course covers techniques that are useful for organizing, processing, and navigating such databases. Topics include choice of distance function, indexing for fast retrieval, and time-series prediction for stitching, segmentation, and outlier detection. Current and potential applications are discussed.

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