Analysis and recognition of human actions with flow features and temporal models
Abstract
This work focuses the recognition of complex human activities in video data. A combination of new features and techniques from speech recognition is used to realize a recognition of action units and their combinations in video sequences. The presented approach shows how motion information gained from video data can be used to interpret the underlying structural information of actions and how higher level models allow an abstraction of different motion categories beyond simple classification.
Keywords
Videoanalyse; motion features; generative ModelleAction recognition; generative models; Bewegungsmerkmale; Bewegungserkennung; video analysisISBN
9783731502821Publisher
KIT Scientific PublishingPublisher website
http://www.ksp.kit.edu/Publication date and place
2014Classification
Computer science