2022
DOI: 10.1109/taffc.2019.2916040
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Affect Estimation in 3D Space Using Multi-Task Active Learning for Regression

Abstract: Acquisition of labeled training samples for affective computing is usually costly and time-consuming, as affects are intrinsically subjective, subtle and uncertain, and hence multiple human assessors are needed to evaluate each affective sample. Particularly, for affect estimation in the 3D space of valence, arousal and dominance, each assessor has to perform the evaluations in three dimensions, which makes the labeling problem even more challenging. Many sophisticated machine learning approaches have been pro… Show more

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Cited by 22 publications
(11 citation statements)
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“…So, the next step is to build a patch model for x ∈ [1. 5,3]. Using only the training examples within this patch, we obtain the first patch model f 1 (x) = 1.65 + 9.81x − 2.01x 2 .…”
Section: Pl Illustrated By a Simple Examplementioning
confidence: 99%
See 3 more Smart Citations
“…So, the next step is to build a patch model for x ∈ [1. 5,3]. Using only the training examples within this patch, we obtain the first patch model f 1 (x) = 1.65 + 9.81x − 2.01x 2 .…”
Section: Pl Illustrated By a Simple Examplementioning
confidence: 99%
“…3(d), we can see that the fitting errors are large when x ∈ [4,5]. So, the next step is to build a patch model for x ∈ [4,5]. Using only the training examples within this patch, we obtain the second patch model f 2 (x) = 19.29 − 8.03x + 1.96x 2 .…”
Section: Pl Illustrated By a Simple Examplementioning
confidence: 99%
See 2 more Smart Citations
“…There are two main scenarios of active learning in the literature: query synthesis [29]- [32] and sampling. The latter can be further divided into stream-based sampling [33], [34] and pool-based sampling [35]- [38]. Sampling-based active learning selects real unlabeled instances from a pool or steam for labeling.…”
Section: B Active Learningmentioning
confidence: 99%