• Corpus ID: 13004532

Emotion Detection using Deep Belief Networks

@inproceedings{Terusaki2014EmotionDU,
  title={Emotion Detection using Deep Belief Networks},
  author={Kevin Terusaki and V. Stigliani},
  year={2014}
}
In this paper, we explore the exciting new field of deep learning. Recent discoveries have made it possible to efficiently train artificial neural networks with multiple layers of hidden units, allowing for more hierarchical, incrementally abstracted representations. We study the performance of a Deep Belief Network, a powerful deep learning architecture, on the task of classifying the emotion of face images. We find that the DBN architecture autonomously learns representationally useful and… 

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