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Real-Time Human Detection and Gesture Recognition for On-Board UAV Rescue

机译:用于船上无人机救援的实时人力检测和手势识别

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摘要

Unmanned aerial vehicles (UAVs) play an important role in numerous technical and scientific fields, especially in wilderness rescue. This paper carries out work on real-time UAV human detection and recognition of body and hand rescue gestures. We use body-featuring solutions to establish biometric communications, like yolo3-tiny for human detection. When the presence of a person is detected, the system will enter the gesture recognition phase, where the user and the drone can communicate briefly and effectively, avoiding the drawbacks of speech communication. A data-set of ten body rescue gestures (i.e., Kick, Punch, Squat, Stand, Attention, Cancel, Walk, Sit, Direction, and PhoneCall) has been created by a UAV on-board camera. The two most important gestures are the novel dynamic Attention and Cancel which represent the set and reset functions respectively. When the rescue gesture of the human body is recognized as Attention, the drone will gradually approach the user with a larger resolution for hand gesture recognition. The system achieves 99.80% accuracy on testing data in body gesture data-set and 94.71% accuracy on testing data in hand gesture data-set by using the deep learning method. Experiments conducted on real-time UAV cameras confirm our solution can achieve our expected UAV rescue purpose.
机译:无人驾驶飞行器(无人机)在众多技术和科学领域发挥着重要作用,特别是在荒野中救援。本文进行实时无人机人类检测和识别身体和手救援手势的工作。我们使用身体特色解决方案来建立生物识别通信,如人类检测的YOLO3-TINY。当检测到人的存在时,系统将进入手势识别阶段,其中用户和无人机可以简要且有效地通信,避免语音通信的缺点。一款UAV在板上摄像头中,由无人机携带的10个身体救援手势(即,踢,拳,蹲,俯视,关注,取消,步行,坐下,方向和唱机)。两个最重要的手势是分别代表集合和重置功能的新型动态关注和取消。当人体的救援姿势被认为是关注时,无人机将逐渐地接近用户具有更大的分辨率用于手势识别。该系统通过使用深度学习方法,在身体手势数据集数据集中测试数据的准确性和94.71%的准确性进行了99.80%的准确性。实时UAV摄像机进行的实验证实了我们的解决方案可以实现我们预期的无人机救援目的。

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