4.5 Article

Insect inspired vision-based velocity estimation through spatial pooling of optic flow during linear motion

期刊

BIOINSPIRATION & BIOMIMETICS
卷 16, 期 6, 页码 -

出版社

IOP Publishing Ltd
DOI: 10.1088/1748-3190/ac1f7b

关键词

insect vision; state estimation; insect flight

资金

  1. NIH [P20GM103650]
  2. Sloan Foundation [FG-2020-13422]

向作者/读者索取更多资源

Insects rely on optic flow to estimate their velocity relative to nearby objects, but certain behaviors require decoupling optic flow into its component parts. A novel algorithm is presented here, potentially helping insects estimate absolute ground velocity from a combination of optic flow and acceleration information. The algorithm reveals critical requirements for estimating absolute ground velocity directly from optic flow during active maneuvers, providing a theoretical framework for efficient state estimation in insect-sized robots.
Insects rely on the perception of image motion, or optic flow, to estimate their velocity relative to nearby objects. This information provides important sensory input for avoiding obstacles. However, certain behaviors, such as estimating the absolute distance to a landing target, accurately measuring absolute distance traveled, and estimating the ambient wind speed require decoupling optic flow into its component parts: absolute ground velocity and distance to nearby objects. Behavioral experiments suggest that insects perform these calculations, but their mechanism for doing so remains unknown. Here we present a novel algorithm that combines the geometry of dynamic forward motion with known features of insect visual processing to provide a hypothesis for how insects might directly estimate absolute ground velocity from a combination of optic flow and acceleration information. Our robotics-inspired-biology approach reveals three critical requirements. First, absolute ground velocity can only be directly estimated from optic flow during times of active acceleration and deceleration. Second, spatial pooling of optic flow across a receptive field helps to alleviate the effects of noise and/or low resolution visual systems. Third, averaging velocity estimates from multiple receptive fields further helps to reject noise. Our algorithm provides a hypothesis for how insects might estimate absolute velocity from vision during active maneuvers, and also provides a theoretical framework for designing fast analog circuitry for efficient state estimation that can be applied to insect-sized robots.

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