Facial action video capture interactive mode designed for embedded device

This study was designed to develop solutions for facial action human computer interaction on embedded devices. This paper presents a new facial detection algorithm using dimension reduction and regionalization computing. Then, a dynamic action judgement algorithm based on simplified Facial Expression Coding System is proposed to describe human facial action. This paper also provide the facial action capture system architecture. Finally, an accuracy report is presented to validate the usefulness of system.

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