Publications

Joint multi-dimensional model for global and time-series annotations

Abstract

Crowdsourcing is a popular approach to collect annotations for unlabeled data instances. It involves collecting a large number of annotations from several, often naive untrained annotators for each data instance which are then combined to estimate the ground truth. Further, annotations for constructs such as affect are often multi-dimensional with annotators rating multiple dimensions, such as valence and arousal, for each instance. Most annotation fusion schemes however ignore this aspect and model each dimension separately. In this article we address this by proposing a generative model for multi-dimensional annotation fusion, which models the dimensions jointly leading to more accurate ground truth estimates. The model we propose is applicable to both global and time series annotation fusion problems and treats the ground truth as a latent variable distorted by the annotators. The model parameters are …

Date
2020
Authors
Anil Ramakrishna, Rahul Gupta, Shrikanth Narayanan
Journal
IEEE Transactions on Affective Computing
Volume
13
Issue
1
Pages
473-484
Publisher
IEEE