Abstract
Affective computing is important to the human–computer interaction, while facial expression analysis is the core issue. In this paper, a multi-model approach is proposed to achieve rational and satisfactory results for real-time facial expression analysis. With the advantages of multi-model interaction, the traditional process of cluster construction is optimized for the facial expression cluster structures according to the multi-model selection, distribution and evaluation interactions. Experiments are conducted to evaluate the rationality of the multi-model approach outlined in this paper. The satisfactory results demonstrate favourable performance comparable to the best results achieved through the cooperative neuron-computing interactions. Not only can the resultant approach construct the cluster distribution efficiently and accurately, but also it is capable of achieving high-quality and high-convergence interactive computing.
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