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Towards Computational Models and Applications of Insect Visual Systems for Motion Perception: A Review

Version 4 2024-03-12, 17:26
Version 3 2023-10-29, 14:18
journal contribution
posted on 2024-03-12, 17:26 authored by Qinbing Fu, Hongxin WangHongxin Wang, Cheng Hu, Shigang Yue

Motion perception is a critical capability determining a variety of aspects of insects' life, including avoiding predators, foraging and so forth. A good number of motion detectors have been identified in the insects' visual pathways. Computational modelling of these motion detectors has not only been providing effective solutions to artificial intelligence, but also benefiting the understanding of complicated biological visual systems. These biological mechanisms through millions of years of evolutionary development will have formed solid modules for constructing dynamic vision systems for future intelligent machines. This article reviews the computational motion perception models originating from biological research of insects' visual systems in the literature. These motion perception models or neural networks comprise the looming sensitive neuronal models of lobula giant movement detectors (LGMDs) in locusts, the translation sensitive neural systems of direction selective neurons (DSNs) in fruit flies, bees and locusts, as well as the small target motion detectors (STMDs) in dragonflies and hover flies. We also review the applications of these models to robots and vehicles. Through these modelling studies, we summarise the methodologies that generate different direction and size selectivity in motion perception. At last, we discuss about multiple systems integration and hardware realisation of these bio-inspired motion perception models.

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Artificial life

Volume

25

Issue

3

Pages/Article Number

263-311

Publisher

MIT Press

ISSN

1064-5462

eISSN

1530-9185

Date Submitted

2019-04-11

Date Accepted

2018-11-30

Date of First Publication

2019-08-01

Date of Final Publication

2019-08-01

Date Document First Uploaded

2019-04-04

ePrints ID

35584