Controlling sequential movements with neural networks in neuromorphic hardware
In this project, we will implement a neural network on a spiking neuromorphic chip ROLLS  that will be able to plan and initiate serially ordered movements in a robotic agent. The student can bring his/her ideas what kind of sequential behaviour should be carried out. One example could be to learn and plan a path that includes specific places. Sequences can be learned with a serial order architecture that we implemented on the ROLLS in previous work. The ROLLS chip will receive sensory information from the Pushbot’s (https://inilabs.com/products/pushbot/) neuromorphic “artificial retina” camera DVS, which will be processed by the implemented neural network. This on-chip neural network will then control the Pushbot’s movement in a closed sensory-motor loop.
 Qiao, Ning, et al. "A reconfigurable on-line learning spiking neuromorphic processor comprising 256 neurons and 128K synapses." Frontiers in neuroscience 9 (2015).
Programming experience or wish to learn (C/C++ or Python); Interest in neuronal systems (biological or artificial); Interest in AI, robotics, or cognitive science.
Project level: Semester project, Bachelor or Master thesis.
yulia.sandamirskaya (at) ini.uzh.ch
raphaela.kreiser (at) uzh.ch