Dual-Constrained Dynamical Neural ODEs for Ambiguity-aware Continuous Emotion Prediction
This work addresses emotion prediction for applications like human-computer interaction, but it is incremental as it builds on existing constrained dynamical neural ODE methods.
The paper tackled the problem of modeling temporal dependencies in emotion distributions to capture ambiguity in perceived emotions that evolve over time, proposing a dual-constrained Neural ODE approach that achieved very promising performance on the RECOLA dataset.
There has been a significant focus on modelling emotion ambiguity in recent years, with advancements made in representing emotions as distributions to capture ambiguity. However, there has been comparatively less effort devoted to the consideration of temporal dependencies in emotion distributions which encodes ambiguity in perceived emotions that evolve smoothly over time. Recognizing the benefits of using constrained dynamical neural ordinary differential equations (CD-NODE) to model time series as dynamic processes, we propose an ambiguity-aware dual-constrained Neural ODE approach to model the dynamics of emotion distributions on arousal and valence. In our approach, we utilize ODEs parameterised by neural networks to estimate the distribution parameters, and we integrate additional constraints to restrict the range of the system outputs to ensure the validity of predicted distributions. We evaluated our proposed system on the publicly available RECOLA dataset and observed very promising performance across a range of evaluation metrics.