PROXY TRAINING DATA FOR HUMAN BODY TRACKING

Synthesized body images are generated for a machine learning algorithm of a body joint tracking system. Frames from motion capture sequences are retargeted to several different body types, to leverage the motion capture sequences. To avoid providing redundant or similar frames to the machine learnin...

Full description

Saved in:
Bibliographic Details
Main Authors COOK MAT, FINNOCHIO MARK, FITZGIBBON ANDREW, SHOTTON JAMIE, MOORE RICHARD
Format Patent
LanguageEnglish
Published 22.09.2011
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:Synthesized body images are generated for a machine learning algorithm of a body joint tracking system. Frames from motion capture sequences are retargeted to several different body types, to leverage the motion capture sequences. To avoid providing redundant or similar frames to the machine learning algorithm, and to provide a compact yet highly variegated set of images, dissimilar frames can be identified using a similarity metric. The similarity metric is used to locate frames which are sufficiently distinct, according to a threshold distance. For realism, noise is added to the depth images based on noise sources which a real world depth camera would often experience. Other random variations can be introduced as well. For example, a degree of randomness can be added to retargeting. For each frame, the depth image and a corresponding classification image, with labeled body parts, are provided. 3-D scene elements can also be provided.
Bibliography:Application Number: US20100727787