Abstract

Building a reliable and efficient collision avoidance system for unmanned aerial vehicles (UAVs) is still a challenging problem. This research takes inspiration from locusts, which can fly in dense swarms for hundreds of miles without collision. In the locust’s brain, a visual pathway of LGMD-DCMD (lobula giant movement detector and descending contra-lateral motion detector) has been identified as collision perception system guiding fast collision avoidance for locusts, which is ideal for designing artificial vision systems. However, there is very few works investigating its potential in real-world UAV applications. In this paper, we present an LGMD based competitive collision avoidance method for UAV indoor navigation. Compared to previous works, we divided the UAV’s field of view into four subfields each handled by an LGMD neuron. Therefore, four individual competitive LGMDs (C-LGMD) compete for guiding the directional collision avoidance of UAV. With more degrees of freedom compared to ground robots and vehicles, the UAV can escape from collision along four cardinal directions (e.g. the object approaching from the left-side triggers a rightward shifting of the UAV). Our proposed method has been validated by both simulations and real-time quadcopter arena experiments.

Highlights

  • unmanned aerial vehicles (UAVs) is one of the most attractive but vulnerable robot platform, which has the potential to be applied in tons of scenarios, such as geography survey, agriculture fertilization, exploration in dangerous or disaster regions, products delivery, The first and second author contributed

  • The Lobula Giant Movement Detector (LGMD) process is composed of five groups of cells, which are Pcells, I-cells, E-cells, S-cells and G-cells, compared to previous model, we added four single competitive LGMD cells representing LGMD output of four sections: Left, Right, Up, and Down

  • Detailed equation and parameters can be found in our previous work[28]. When it comes to G layer, The unnormalized membrane potential of four competitive LGMDs (C-LGMD) are Calculated respectively: min[Diag1,Diag2]

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Summary

Introduction

UAV is one of the most attractive but vulnerable robot platform, which has the potential to be applied in tons of scenarios, such as geography survey, agriculture fertilization, exploration in dangerous or disaster regions, products delivery, The first and second author contributed . Optic Flow (OF) is a widely used vision based motion detecting method inspired by biological mechanism in flies and bees[21] It is introduced in collision avoidance technology, e.g. Zufferey[30] applied 1D OF sensor onto a 30g light weight fixed wing UAV and achieved automatic obstacle avoidance in indoor(GPS denied) structured environment. To acquire the information about the coming direction of imminent obstacles, this research proposed a new image partition strategy, especially for LGMD application on UAVs, and a corresponding steering method for 3D avoidance behaviour. Both video simulation and real-time flight demonstrated the performance of this method

LGMD Process
Quadcopter Platform
Video Simulation
Hovering & Features Analysis
Arena Real-time Flight
Conclusion
Full Text
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