2019
DOI: 10.31256/ukras19.16
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Transfer Learning in Assistive Robotics: From Human to Robot Domain

Abstract: Transfer Learning (TL) aims to learn a problem from a source reference to improve on the performance achieved in a target reference. Recently, this concept has been applied in different domains, especially, when the data in the target is insufficient. TL can be applied across domains or across tasks. However, the challenges related to what to transfer, how to transfer and when to transfer create limitations in the realisation of this concept in day to day applications. To address the challenges, this paper pre… Show more

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“…In HAR using 3D human information, TL is important in applications requiring knowledge transfer from a human information distribution to a different information distribution, such as a robot learning an activity, as illustrated in Figure 6. The entire processes of data acquisition, processing and activity recognition embodies TL, as there is the need for understanding the activity and both information distributions for the effective transfer to be implemented on a robot [84].…”
Section: Human Activities and Transfer Learningmentioning
confidence: 99%
“…In HAR using 3D human information, TL is important in applications requiring knowledge transfer from a human information distribution to a different information distribution, such as a robot learning an activity, as illustrated in Figure 6. The entire processes of data acquisition, processing and activity recognition embodies TL, as there is the need for understanding the activity and both information distributions for the effective transfer to be implemented on a robot [84].…”
Section: Human Activities and Transfer Learningmentioning
confidence: 99%