Reprint

Machine Learning Techniques for Assistive Robotics

Edited by
July 2020
210 pages
  • ISBN978-3-03936-338-4 (Hardback)
  • ISBN978-3-03936-339-1 (PDF)

This book is a reprint of the Special Issue Machine Learning Techniques for Assistive Robotics that was published in

Computer Science & Mathematics
Engineering
Physical Sciences
Summary

Assistive robots are categorized as robots that share their area of work and interact with humans. Their main goals are to help, assist, and monitor humans, especially people with disabilities. To achieve these goals, it is necessary that these robots possess a series of characteristics, namely the abilities to perceive their environment from their sensors and act consequently, to interact with people in a multimodal manner, and to navigate and make decisions autonomously. This complexity demands computationally expensive algorithms to be performed in real time. The advent of high-end embedded processors has enabled several such algorithms to be processed concurrently and in real time. All these capabilities involve, to a greater or less extent, the use of machine learning techniques. In particular, in the last few years, new deep learning techniques have enabled a very important qualitative leap in different problems related to perception, navigation, and human understanding. In this Special Issue, several works are presented involving the use of machine learning techniques for assistive technologies, in particular for assistive robots.

Format
  • Hardback
License
© 2020 by the authors; CC BY-NC-ND license
Keywords
NIR facial expression recognition; SE block; 3D CNN; adaptive feature weights calibration; feature extraction; sound classification; support vector machine; sound processing; robotics; MFCC; multi-object tracking; Siamese network; discriminative feature; online learning; assistive robot; fall detection; lying-pose recognition; deep learning; mobile robot; convolutional neural network; support vector machine; brain–computer interface (BCI); human–robot interaction; assistive robotics; motion control; electroencephalography (EEG); alpha brainwaves; neural network (NN).; Activities of Daily Living (ADL); data fusion; environments; feature extraction; pattern recognition; sensors; activities of daily living; AdaBoost; mobile devices; artificial neural networks; deep neural networks; daily activities recognition; ensemble learning; ensemble classifiers; environments; mobile devices; sensors; systematic review; cognitive assistants; aging; emotion recognition; robotics; healthcare; disability; assistive technology; socially assistive robotics; accelerometer; activities of daily living; mobile devices; sensors; n/a