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Visual attention prediction improves performance of autonomous drone racing agents

Author

Listed:
  • Christian Pfeiffer
  • Simon Wengeler
  • Antonio Loquercio
  • Davide Scaramuzza

Abstract

Humans race drones faster than neural networks trained for end-to-end autonomous flight. This may be related to the ability of human pilots to select task-relevant visual information effectively. This work investigates whether neural networks capable of imitating human eye gaze behavior and attention can improve neural networks’ performance for the challenging task of vision-based autonomous drone racing. We hypothesize that gaze-based attention prediction can be an efficient mechanism for visual information selection and decision making in a simulator-based drone racing task. We test this hypothesis using eye gaze and flight trajectory data from 18 human drone pilots to train a visual attention prediction model. We then use this visual attention prediction model to train an end-to-end controller for vision-based autonomous drone racing using imitation learning. We compare the drone racing performance of the attention-prediction controller to those using raw image inputs and image-based abstractions (i.e., feature tracks). Comparing success rates for completing a challenging race track by autonomous flight, our results show that the attention-prediction based controller (88% success rate) outperforms the RGB-image (61% success rate) and feature-tracks (55% success rate) controller baselines. Furthermore, visual attention-prediction and feature-track based models showed better generalization performance than image-based models when evaluated on hold-out reference trajectories. Our results demonstrate that human visual attention prediction improves the performance of autonomous vision-based drone racing agents and provides an essential step towards vision-based, fast, and agile autonomous flight that eventually can reach and even exceed human performances.

Suggested Citation

  • Christian Pfeiffer & Simon Wengeler & Antonio Loquercio & Davide Scaramuzza, 2022. "Visual attention prediction improves performance of autonomous drone racing agents," PLOS ONE, Public Library of Science, vol. 17(3), pages 1-16, March.
  • Handle: RePEc:plo:pone00:0264471
    DOI: 10.1371/journal.pone.0264471
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