LEARNING
A Survey of Deep Learning Techniques for Mobile Robot Applications
Jahanzaib Shabbir, Tarique Anwer
- Year
- 2018
- Access
- Open access
Abstract
Advancements in deep learning over the years have attracted research into how deep artificial neural networks can be used in robotic systems. This research survey will present a summarization of the current research with a specific focus on the gains and obstacles for deep learning to be applied to mobile robotics.
Keywords
cs.CVcs.RO
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