This dissertation combines recent theoretical models from the neuroscience community with recent advancements in parallel computing to implement a large simulation that emulates the motion pathway of a mammalian visual system. The simulation ran in real time, and was used to perform real world obstacle detection and avoidance with an autonomous, mobile robot. Data is shown from experimental trials of the robot navigating an obstacle course in which the robot had both strategic waypoint finding goals and obstacle avoidance tactical goals that were successfully integrated into a single navigational behavior. The simulator is distinguished from many previous robotics efforts due to its size and faithfulness to neuroscience. It employs populati...
© Copyright 2008 IEEE – All Rights ReservedThe extraction of useful cues for object identification a...
Neuromorphic hardware emulates dynamics of biological neural networks in electronic circuits offerin...
This paper presents a signal processing architecture for a sensory-motor system based on the smart s...
Obstacle avoidance is a difficult task for autonomous robots. To overcome limitations of traditional...
Image motion due to self motion is an important cue biological systems use for gathering information...
At present, robots are applied to specific situations and needs, so special methods are adopted for ...
UnrestrictedThe Lobula Giant Movement Detector (LGMD), a visual interneuron in the locust's brain, r...
Intelligent systems with even the bare minimum of sophistication require extensive computational pow...
Robotic navigation has been an area of intense research since the onset of mobile robot development....
Chinapirom T, Witkowski U, Rückert U, eds. A Biologically-Inspired and Resource-Efficient Vision Sys...
Obstacle avoidance is a fundamental behavior required to achieve safety and stability in both animal...
Reliable distance estimation of objects in a visual scene is essential for any artificial vision sys...
Neuromorphic computing aims to mimic the computational principles of the brain in silico and has mot...
This thesis documents a simulation-based investigation into the use of vision for the navigation of ...
This paper addresses the co-design of biologically-plausible vision-based algorithms applied to cont...
© Copyright 2008 IEEE – All Rights ReservedThe extraction of useful cues for object identification a...
Neuromorphic hardware emulates dynamics of biological neural networks in electronic circuits offerin...
This paper presents a signal processing architecture for a sensory-motor system based on the smart s...
Obstacle avoidance is a difficult task for autonomous robots. To overcome limitations of traditional...
Image motion due to self motion is an important cue biological systems use for gathering information...
At present, robots are applied to specific situations and needs, so special methods are adopted for ...
UnrestrictedThe Lobula Giant Movement Detector (LGMD), a visual interneuron in the locust's brain, r...
Intelligent systems with even the bare minimum of sophistication require extensive computational pow...
Robotic navigation has been an area of intense research since the onset of mobile robot development....
Chinapirom T, Witkowski U, Rückert U, eds. A Biologically-Inspired and Resource-Efficient Vision Sys...
Obstacle avoidance is a fundamental behavior required to achieve safety and stability in both animal...
Reliable distance estimation of objects in a visual scene is essential for any artificial vision sys...
Neuromorphic computing aims to mimic the computational principles of the brain in silico and has mot...
This thesis documents a simulation-based investigation into the use of vision for the navigation of ...
This paper addresses the co-design of biologically-plausible vision-based algorithms applied to cont...
© Copyright 2008 IEEE – All Rights ReservedThe extraction of useful cues for object identification a...
Neuromorphic hardware emulates dynamics of biological neural networks in electronic circuits offerin...
This paper presents a signal processing architecture for a sensory-motor system based on the smart s...