Neuro-evolution in Neuroscience & Robotics: Insights from GECCO 2021 π§ π€
Discover how neuro-evolution techniques are transforming neuroscience and robotics. Join Eric O. Scott and Kenneth A. De Jong as they explore innovative applications showcased at GECCO 2021's NEvo@Work workshop.

Association for Computing Machinery (ACM)
200 views β’ Jul 22, 2021

About this video
Neuro-evolution at Work in Neuroscience and Robotics (wkspk110, WS - NEvo@Work)
Eric O. Scott, Kenneth A. De Jong
This presentation gives an overview of a unique multi-year research project in which neuro- evolution is being used to simultaneously develop brain models capable of replicating the neural activity of rats exploring mazes for rewards and simultaneously using those results to embed and evolve neuro-controllers in robots solving similar maze problems. On the neuroscience side, evolved brain-based recurrent spiking neural networks have been shown to be capable of modeling the spatial and working memory elements necessary for rats solving maze problems. On the robotics side, evolved neuro-controllers have been shown to be capable of generating comparable maze-solving behavior in robots. We discuss how these results fit into the field's broader ambition of using neuroscience to inform and enable the design of low-cost, low-power embedded systems for robotics and AI. Finally, there will be a short discussion of work in progress including the introduction of some co-evolutionary ideas.
GECCO 2021
The Genetic and Evolutionary Computation Conference
July 10-14, 2021 β Lille, France (online)
https://gecco-2021.sigevo.org
Eric O. Scott, Kenneth A. De Jong
This presentation gives an overview of a unique multi-year research project in which neuro- evolution is being used to simultaneously develop brain models capable of replicating the neural activity of rats exploring mazes for rewards and simultaneously using those results to embed and evolve neuro-controllers in robots solving similar maze problems. On the neuroscience side, evolved brain-based recurrent spiking neural networks have been shown to be capable of modeling the spatial and working memory elements necessary for rats solving maze problems. On the robotics side, evolved neuro-controllers have been shown to be capable of generating comparable maze-solving behavior in robots. We discuss how these results fit into the field's broader ambition of using neuroscience to inform and enable the design of low-cost, low-power embedded systems for robotics and AI. Finally, there will be a short discussion of work in progress including the introduction of some co-evolutionary ideas.
GECCO 2021
The Genetic and Evolutionary Computation Conference
July 10-14, 2021 β Lille, France (online)
https://gecco-2021.sigevo.org
Video Information
Views
200
Likes
5
Duration
19:19
Published
Jul 22, 2021
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