Neuromorphic Perception and Navigation for Mobile Robots: A Review Novo, Alvaro Lobon, Francisco García de Marina, Hector Romero García, Samuel Francisco Barracno, Francisco Computer systems organization Robotic autonomy Hardware With the fast and unstoppable evolution of robotics and artificial intelligence, effective autonomous navigation in real-world scenarios has become one of the most pressing challenges in the literature. However, demanding requirements, such as real-time operation, energy and computational efficiency, robustness, and reliability, make most current solutions unsuitable for real-world challenges. Thus, researchers are fostered to seek innovative approaches, such as bio-inspired solutions. Indeed, animals have the intrinsic ability to efficiently perceive, understand, and navigate their unstructured surroundings. To do so, they exploit self-motion cues, proprioception, and visual flow in a cognitive process to map their environment and locate themselves within it. Computational neuroscientists aim to answer “how” and “why” such cognitive processes occur in the brain, to design novel neuromorphic sensors and methods that imitate biological processing. This survey aims to comprehensively review the application of brain-inspired strategies to autonomous navigation. The paper delves into areas such as neuromorphic perception, asynchronous event processing, energy-efficient and adaptive learning, and the emulation of brain regions vital for navigation, such as the hippocampus and entorhinal cortex. 2024-09-03T10:50:17Z 2024-09-03T10:50:17Z 2024-05-14 journal article Novo, A. et. al. Volume 56, Issue 10. [https://doi.org/10.1145/3656469] https://hdl.handle.net/10481/93842 10.1145/3656469 eng http://creativecommons.org/licenses/by-nc-sa/4.0/ open access Atribución-NoComercial-CompartirIgual 4.0 Internacional ACM Digital Library