SOTAVerified

Detecting Decision Ambiguity from Facial Images

2018-05-152018 13th IEEE International Conference on Automatic Face & Gesture Recognition (FG 2018) 2018Code Available0· sign in to hype

Pavel Jahoda, Antonin Vobecky, Jan Cech, Jiri Matas

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

In situations when potentially costly decisions are being made, faces of people tend to reflect a level of certainty about the appropriateness of the chosen decision. This fact is known from the psychological literature. In the paper, we propose a method that uses facial images for automatic detection of the decision ambiguity state of a subject. To train and test the method, we collected a large-scale dataset from “Who Wants to Be a Millionaire?” – a popular TV game show. The videos provide examples of various mental states of contestants, including uncertainty, doubts and hesitation. The annotation of the videos is done automatically from onscreen graphics. The problem of detecting decision ambiguity is formulated as binary classification. Video-clips where a contestant asks for help (audience, friend, 50:50) are considered as positive samples; if he (she) replies directly as negative ones. We propose a baseline method combining a deep convolutional neural network with an SVM. The method has an error rate of 24%. The error of human volunteers on the same dataset is 45%, close to chance.

Tasks

Reproductions