Addressing Data Scarcity in Multimodal User State Recognition by Combining Semi-Supervised and Supervised Learning

02/08/2022
by   Hendric Voß, et al.
0

Detecting mental states of human users is crucial for the development of cooperative and intelligent robots, as it enables the robot to understand the user's intentions and desires. Despite their importance, it is difficult to obtain a large amount of high quality data for training automatic recognition algorithms as the time and effort required to collect and label such data is prohibitively high. In this paper we present a multimodal machine learning approach for detecting dis-/agreement and confusion states in a human-robot interaction environment, using just a small amount of manually annotated data. We collect a data set by conducting a human-robot interaction study and develop a novel preprocessing pipeline for our machine learning approach. By combining semi-supervised and supervised architectures, we are able to achieve an average F1-score of 81.1% for dis-/agreement detection with a small amount of labeled data and a large unlabeled data set, while simultaneously increasing the robustness of the model compared to the supervised approach.

READ FULL TEXT
research
03/31/2023

SemiMemes: A Semi-supervised Learning Approach for Multimodal Memes Analysis

The prevalence of memes on social media has created the need to sentimen...
research
07/10/2017

Semi-Supervised Haptic Material Recognition for Robots using Generative Adversarial Networks

Material recognition enables robots to incorporate knowledge of material...
research
04/27/2023

A Supervised Machine Learning Approach to Operator Intent Recognition for Teleoperated Mobile Robot Navigation

In applications that involve human-robot interaction (HRI), human-robot ...
research
05/28/2019

Importance of user inputs while using incremental learning to personalize human activity recognition models

In this study, importance of user inputs is studied in the context of pe...
research
11/24/2020

Semi-supervised Gated Recurrent Neural Networks for Robotic Terrain Classification

Legged robots are popular candidates for missions in challenging terrain...
research
11/28/2019

Lidar-Camera Co-Training for Semi-Supervised Road Detection

Recent advances in the field of machine learning and computer vision hav...
research
03/26/2019

Improved Generalization of Heading Direction Estimation for Aerial Filming Using Semi-supervised Regression

In the task of Autonomous aerial filming of a moving actor (e.g. a perso...

Please sign up or login with your details

Forgot password? Click here to reset