Zhang, Zhuhong, Yue, Shigang and Zhang, Guopeng (2015) Fly visual system inspired artificial neural network for collision detection. Neurocomputing, 153 (4). pp. 221-234. ISSN 0925-2312
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2015 ZhangZhuhong&YueShigang&ZhangGuopeng- flying emd Neurocomputing downloaded.pdf - Whole Document Restricted to Repository staff only 3MB |
Item Type: | Article |
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Item Status: | Live Archive |
Abstract
This work investigates one bio-inspired collision detection system based on fly visual neural structures, in which collision alarm is triggered if an approaching object in a direct collision course appears in the field of view of a camera or a robot, together with the relevant time region of collision. One such artificial system consists of one artificial fly visual neural network model and one collision detection mechanism. The former one is a computational model to capture membrane potentials produced by neurons. The latter one takes the outputs of the former one as its inputs, and executes three detection schemes: (i) identifying when a spike takes place through the membrane potentials and one threshold scheme; (ii) deciding the motion direction of a moving object by the Reichardt detector model; and (iii) sending collision alarms and collision regions. Experimentally, relying upon a series of video image sequences with different scenes, numerical results illustrated that the artificial system with some striking characteristics is a potentially alternative tool for collision detection.
Keywords: | Fly visual neural systems, artificial neural network, Collision detection, Collision region, Reichardt correlator, bmjgoldcheck, NotOAChecked |
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Subjects: | G Mathematical and Computer Sciences > G730 Neural Computing |
Divisions: | College of Science > School of Computer Science |
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ID Code: | 17881 |
Deposited On: | 17 Jul 2015 08:45 |
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