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Continuous Learning Based Novelty Aware Emotion Recognition System (2306.08733v1)

Published 14 Jun 2023 in cs.CV, cs.LG, and cs.MM

Abstract: Current works in human emotion recognition follow the traditional closed learning approach governed by rigid rules without any consideration of novelty. Classification models are trained on some collected datasets and expected to have the same data distribution in the real-world deployment. Due to the fluid and constantly changing nature of the world we live in, it is possible to have unexpected and novel sample distribution which can lead the model to fail. Hence, in this work, we propose a continuous learning based approach to deal with novelty in the automatic emotion recognition task.

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