16,718 research outputs found
Methodology and themes of human-robot interaction: a growing research field
Original article can be found at: http://www.intechweb.org/journal.php?id=3 Distributed under the Creative Commons Attribution License. Users are free to read, print, download and use the content or part of it so long as the original author(s) and source are correctly credited.This article discusses challenges of Human-Robot Interaction, which is a highly inter- and multidisciplinary area. Themes that are important in current research in this lively and growing field are identified and selected work relevant to these themes is discussed.Peer reviewe
Technology and the Appearance of the Good: Carebots, Virtual Virtue, and the Best Possible Life
Growth of the elderly population and nursing shortage place increased pressure on our health care systems. One possible response is to let care robots or carebots take over care tasks. Some of these robots appear human in some way (humanoid robots), or look and act like a pet (pet robots). As personal robots they ‘share physical and emotional spaces with the user’ (Cerqui and Arras 2001) and play a role in daily life. They can assist ill and elderly people by monitoring them, by delivering drugs, by moving them around, by helping them with domestic tasks. They can be used for therapeutic aims, or to entertain and accompany people. \ud
How can we evaluate such a near-future scenario in terms of its contribution to ‘the good life’, given that carebots would often replace real humans or pets?\u
The Future of Work In Cities
The latest report in our City of the Future series examines societal shifts and advancements in technology that are impacting the rapidly changing American workforce. The report outlines solutions to help city leaders plan for the fast-approaching future, while forecasting the economic viability of two distinct sectors – retail and office administration – in which a quarter of Americans are currently employed
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Post-automation: report from an international workshop
The purpose of this report is to share lessons from an international research workshop dedicated to post- automation. Twenty-seven researchers from eleven different countries in Africa, Asia, Latin America and Europe, met at the Science Policy Research Unit at Sussex University on 11-13 September 2019, where we discussed empirical research papers and explored post-automation in group activities. We write this report primarily for researchers, but also for activists and policy advisors looking for more imaginative approaches to governing technology, work and sustainability in society, compared to those dominant agendas adapting automatically to the interests behind automation.
The report is structured as follows. Section two introduces the workshop topic and papers presented, and which leads into two related areas that became a focus for discussion. First, some challenges in the foundations
of automation theory (section three). And second, post-automation as a more constructive proposition to the challenges of automation, and that is happening right now (section four). Section five summarises some key points arising from the workshop, based on empirical observations from the margins of digital technology development, and that give both a flavour of the workshop and help elaborate the post-automation proposition. Some analytical and strategic themes are discussed in section six. We conclude in section seven with proposals for a post-automation agenda
Toward Human-Like Social Robot Navigation: A Large-Scale, Multi-Modal, Social Human Navigation Dataset
Humans are well-adept at navigating public spaces shared with others, where
current autonomous mobile robots still struggle: while safely and efficiently
reaching their goals, humans communicate their intentions and conform to
unwritten social norms on a daily basis; conversely, robots become clumsy in
those daily social scenarios, getting stuck in dense crowds, surprising nearby
pedestrians, or even causing collisions. While recent research on robot
learning has shown promises in data-driven social robot navigation,
good-quality training data is still difficult to acquire through either trial
and error or expert demonstrations. In this work, we propose to utilize the
body of rich, widely available, social human navigation data in many natural
human-inhabited public spaces for robots to learn similar, human-like, socially
compliant navigation behaviors. To be specific, we design an open-source
egocentric data collection sensor suite wearable by walking humans to provide
multi-modal robot perception data; we collect a large-scale (~50 km, 10 hours,
150 trials, 7 humans) dataset in a variety of public spaces which contain
numerous natural social navigation interactions; we analyze our dataset,
demonstrate its usability, and point out future research directions and use
cases
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