Estimating continuous affect with label uncertaintyDownload PDFOpen Website

2021 (modified: 12 Nov 2022)ACII 2021Readers: Everyone
Abstract: Continuous affect estimation is a problem where there is an inherent uncertainty and subjectivity in the labels that accompany data samples – typically, datasets use the average of multiple annotations or self-reporting to obtain ground truth labels. In this work, we propose a method for uncertainty-aware continuous affect estimation, that models explicitly the uncertainty of the ground truth label as a uni-variate Gaussian with mean equal to the ground truth label, and unknown variance. For each sample, the proposed neural network estimates not only the value of the target label (valence and arousal in our case), but also the variance. The network is trained with a loss that is defined as the KL-divergence between the estimation (valence/arousal) and the Gaussian around the ground truth. We show that, in two affect recognition problems with real data, the estimated variances are correlated with measures of uncertainty/error in the labels that are extracted either by considering multiple annotations of the data, or by manually cleaning the dataset.
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