4.6 Article

Intelligent Human-UAV Interaction System with Joint Cross-Validation over Action-Gesture Recognition and Scene Understanding

Journal

APPLIED SCIENCES-BASEL
Volume 9, Issue 16, Pages -

Publisher

MDPI
DOI: 10.3390/app9163277

Keywords

action detection; gesture recognition; scene understanding; joint cross validation

Funding

  1. Program of National Natural Science Foundation of China (NSFC) [U1609210, 61573338, U1508208]

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We propose an intelligent human-unmanned aerial vehicle (UAV) interaction system, in which, instead of using the conventional remote controller, the UAV flight actions are controlled by a deep learning-based action-gesture joint detection system. The Resnet-based scene-understanding algorithm is introduced into the proposed system to enable the UAV to adjust its flight strategy automatically, according to the flying conditions. Meanwhile, both the deep learning-based action detection and multi-feature cascade gesture recognition methods are employed by a cross-validation process to create the corresponding flight action. The effectiveness and efficiency of the proposed system are confirmed by its application to controlling the flight action of a real flying UAV for more than 3 h.

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