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Investigating Refractoriness in Collision Perception Neuronal Model

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conference contribution
posted on 2024-02-07, 20:33 authored by Qinbing Fu, Wenting DuanWenting Duan, Mu Hua, Shigang Yue
<p>Currently, collision detection methods based on visual cues are still challenged by several factors including ultrafast approaching velocity and noisy signal. Taking inspiration from nature, though the computational models of lobula giantmovement detectors (LGMDs) in locust’s visual pathways have demonstrated positive impacts on addressing these problems, there remains potential for improvement. In this paper, we propose a novel method mimicking neuronal refractoriness, i.e. the refractory period (RP), and further investigate its functionality and efficacy in the classic LGMD neural network model for collision perception. Compared with previous works, the two phases constructing RP, namely the absolute refractory period (ARP) and relative refractory period (RRP) are computationally implemented through a ‘link (L) layer’ located between the photoreceptor and the excitation layers to realise the dynamic characteristic of RP in discrete time domain. The L layer, consisting of local time-varying thresholds, represents a sort of mechanism that allows photoreceptors to be activated individually and selectively by comparing the intensity of each photoreceptor to its corresponding local threshold established by its last output. More specifically, while the local threshold can merely be augmented by larger output, it shrinks exponentially over time. Our experimental outcomes show that, to some extent, the investigated mechanism not only enhances the LGMD model in terms of reliability and stability when faced with ultra-fast approaching objects, but also improves its performance against visual stimuli polluted by Gaussian or Salt-Pepper noise. This research demonstrates the modelling of refractoriness is effective in collision perception neuronal models, and promising to address the aforementioned collision detection challenges.</p>

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publisher

IEEE

ISSN

2161-4407

eISSN

2161-4407

ISBN

978-1-6654-3900-8

Date Submitted

2021-10-11

Date Accepted

2021-07-01

Date of First Publication

2021-09-20

Date of Final Publication

2021-09-20

Event Name

2021 International Joint Conference on Neural Networks (IJCNN)

Event Dates

18-22 July 2021

Date Document First Uploaded

2021-09-27

ePrints ID

46692

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