A Neuromorphic Vision and Feedback Sensor Fusion Based on Spiking Neural Networks for Real-Time Robot Adaption

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2024Departamento/s
Ingeniería en Automática, Electrónica, Arquitectura y Redes de Computadores; Ingeniería InformáticaFuente
Advanced Intelligent Systems, Vol. 6, Núm. 5, 2024Resumen
For some years now, the locomotion mechanisms used by vertebrate animals have
been a major inspiration for the improvement of robotic systems. These mechanisms range from adapting their movements to move through the environment to
the ability to chase prey, all thanks to senses such as sight, hearing, and touch.
Neuromorphic engineering is inspired by brain problem-solving techniques with
the goal of implementing models that take advantage of the characteristics of
biological neural systems. While this is a well-defined and explored area in this
field, there is no previous work that fuses analog and neuromorphic sensors to
control and modify robotic behavior in real time. Herein, a system is presented
based on spiking neural networks implemented on the SpiNNaker hardware
platform that receives information from both analog (force-sensing resistor) and
digital (neuromorphic retina) sensors and is able to adapt the speed and orientation
of a hexapod robot depending on the stability of the terrain where it is located and
the position of the target. These sensors are used to modify the behavior of different spiking central pattern generators, which in turn will adapt the speed and
orientation of the robotic platform, all in real time. In particular, experiments show
that the network is capable of correctly adapting to the stimuli received from the
sensors, modifying the speed and heading of the robotic platform
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