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Realistic animation of human figures using artificial neural networks
Authors:Z. Taha   R. Brown  D. Wright
Affiliation:

* Design Engineering Research Centre, University of Wales Institute, Cardiff, Western Avenue, Llandaff, Cardiff CF5 2YB, UK

Department of Design, Brunel University, Runnymede Campus, Surrey TW20 OJZ, UK

Abstract:We describe a new approach to the animation of human figures which can produce realistic animation and based on artificial neural networks (ANN). A fully connected ANN is trained with inputs and outputs of key frames obtained from image analysis and key postures and parameters of standing, walking and running. A behaviour index is introduced as an input to the ANN. Each index is unique to each behaviour. Other inputs include speed, cycle history and subsytem index. The subsystem index refers to the different subsytem of the human figure e.g. the right leg is a subsystem referred to by an index. The outputs are the joints displacements. The ANN is trained using the back propagation method. The ANN was able to generate realistic animations of walking and running and could merge three different behaviours; standing, walking and running. The proposed method should enable design evaluations, human factors analysis, task simulation and motion understanding easier for non-animation experts.
Keywords:Author Keywords: Realistic animation   human figure   key frame animation   laws of dynamics   artificial neural networks   back propagation
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