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Journal ArticleDOI

A Survey on Perception Methods for Human–Robot Interaction in Social Robots

TLDR
This paper reviews several widely used perception methods of HRI in social robots and investigates general perception tasks crucial for HRI, such as where the objects are located in the rooms, what objects are in the scene, and how they interact with humans.
Abstract
For human–robot interaction (HRI), perception is one of the most important capabilities. This paper reviews several widely used perception methods of HRI in social robots. Specifically, we investigate general perception tasks crucial for HRI, such as where the objects are located in the rooms, what objects are in the scene, and how they interact with humans. We first enumerate representative social robots and summarize the most three important perception methods from these robots: feature extraction, dimensionality reduction, and semantic understanding. For feature extraction, four widely used signals including visual-based, audio-based, tactile-based and rang sensors-based are reviewed, and they are compared based on their advantages and disadvantages. For dimensionality reduction, representative methods including principle component analysis (PCA), linear discriminant analysis (LDA), and locality preserving projections (LPP) are reviewed. For semantic understanding, conventional techniques for several typical applications such as object recognition, object tracking, object segmentation, and speaker localization are discussed, and their characteristics and limitations are also analyzed. Moreover, several popular data sets used in social robotics and published semantic understanding results are analyzed and compared in light of our analysis of HRI perception methods. Lastly, we suggest important future work to analyze fundamental questions on perception methods in HRI.

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Citations
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Journal ArticleDOI

Tactile sensing in dexterous robot hands - Review

TL;DR: Current state-of-the-art of manipulation and grasping applications that involve artificial sense of touch that involve algorithms and tactile feedback-based control systems that exploit signals from the sensors are reviewed.
Journal ArticleDOI

Young Russian adults' attitudes towards the potential use of robots in hotels

TL;DR: In this paper, the authors explored data from a 2016-2017 survey of Russian consumers to determine how young Russian adults perceive the use of robots in hotels, showing which service-oriented tasks that Russian consumers find to be the most agreeable to be done by robots and which ones they are more likely to want humans to continue doing.
Journal ArticleDOI

Emotion Communication System

TL;DR: A pillow robot speech emotion communication system is designed, where the pillow robot acts as a medium for user emotion mapping and the real-time performance of the whole communication process in the scene of a long distance communication between a mother-child users’ pair is analyzed.
Book

Computational Human-Robot Interaction

TL;DR: A systematic survey of computational research in humanrobotinteraction HRI over the past decade is presented, categorized into eight topics and suggested promising future research areas are suggested.
Journal ArticleDOI

A Review on Automatic Facial Expression Recognition Systems Assisted by Multimodal Sensor Data

TL;DR: This survey comprehensively discusses three significant challenges in the unconstrained real-world environments, such as illumination variation, head pose, and subject-dependence, which may not be resolved by only analysing images/videos in the FER system and introduces three categories of sensors that may help improve the accuracy and reliability of an expression recognition system.
References
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Proceedings ArticleDOI

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