Using a quadcopter to model the visual navigation behaviours of flying insects
dc.contributor.advisor
Webb, Barbara
dc.contributor.advisor
Petillot, Yvan
dc.contributor.author
Stankiewicz, Jan
dc.contributor.sponsor
Engineering and Physical Sciences Research Council (EPSRC)
en
dc.date.accessioned
2021-10-06T10:21:37Z
dc.date.available
2021-10-06T10:21:37Z
dc.date.issued
2021-07-31
dc.description.abstract
Micro aerial vehicles (MAVs) have become increasingly prominent in the last decade, with several sectors now routinely using this technology for applications such as
filming, surveying and maintenance. A significant barrier towards further MAV technology adoption is the absence of reliable, lightweight autonomous navigation systems
that can robustly operate in areas where global navigation satellite systems (GNSS)
signals are not reliable.
Flying insects are an order of magnitude smaller than MAVs and they can navigate
between several sites of interest in large local neighbourhoods that span several kilometres. Fed by low resolution eyes and using neural processing circuits, the power con sumption of an insect’s brain is several orders of magnitude lower than state-of-the-art
robotic visual navigation systems. This formidable capability has inspired ethologists,
neuroscientists and engineers to engage in a process of reverse engineering the key
mechanisms involved in local insect navigation behaviours, with the ultimate goal of
describing the complete underlying neural circuitry.
In this thesis, recent advances in MAV technology are exploited as a means of
evaluating candidate behavioural models that have only been deployed in simulation
environments or on terrestrial robotic platforms. The hardware and software development of an aerial biorobot that is configured to test insect navigation models is
described. This system features a quadcopter airframe, Pixhawk flight controller and
selected interfacing ancillary avionics. The resultant platform has sufficient onboard
processing power to flexibly deploy path integration and visual homing behavioural
models. The biorobot also features an active mechanical view stabilisation system.
The biorobot is first used to embody a recently proposed anatomically constrained
path integration circuit. To this end, a biologically plausible matched filter visual
odometry pipeline is implemented. The viewing direction, resolution and field of
view of the visual input to this circuit is systematically altered and tested in a variety
of natural scenes. This process enables the prescription of an optimal visual sensor
configuration on the basis of empirical evidence. When the biorobot is deployed in a
relatively flat environment with the optimal view configuration, a homing error drift
rate of 1.5m per 100m is estimated.
The biorobot subsequently supports an investigation into whether flying insects
could use visual route following to overcome the drift issues associated with path
integration. A robust procedure is developed and evaluated. It is found to be effective
across distances of at least 30m, even in seemingly featureless environments such as
empty arable fields. It is known that orientated bandpass filters exist in the early stages
of the human vision system. Using a complex wavelet structural similarity algorithm,
the orientated bandpass filter approach is adapted to a visual homing framework. This
configuration is shown to double the catchment area and increase the discriminability of
the snapshot model for view matching in natural scenes when it is compared to existing
view matching techniques that operate in the spatial domain.
en
dc.identifier.uri
https://hdl.handle.net/1842/38117
dc.identifier.uri
http://dx.doi.org/10.7488/era/1386
dc.language.iso
en
en
dc.publisher
The University of Edinburgh
en
dc.relation.hasversion
Stankiewicz, J. and Webb, B. (2020). Using the neural circuit of the insect central complex for path integration on a micro aerial vehicle. In Vouloutsi, V., Mura, A., Tauber, F., Speck, T., Prescott, T. J., and Verschure, P. F. M. J., editors, Biomimetic and Biohybrid Systems, pages 325–337, Cham. Springer International Publishing.
en
dc.subject
biorobots
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dc.subject
insect navigation behaviour
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dc.subject
quadcopter
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dc.subject
path integration
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dc.title
Using a quadcopter to model the visual navigation behaviours of flying insects
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dc.type
Thesis or Dissertation
en
dc.type.qualificationlevel
Doctoral
en
dc.type.qualificationname
PhD Doctor of Philosophy
en
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