Act: An Autonomous Drone Cinematography System For Action Scenes

2018 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA)(2018)

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摘要
Drones are enabling new forms of cinematography. Aerial filming via drones in action scenes is difficult because it requires users to understand the dynamic scenarios and operate the drone and camera simultaneously. Existing systems allow the user to manually specify the shots and guide the drone to capture footage, while none of them employ aesthetic objectives to automate aerial filming in action scenes. Meanwhile, these drone cinematography systems depend on the external motion capture systems to perceive the human action, which is limted to the indoor environment. In this paper, we propose an Autonomous CinemaTography system "ACT" on the drone platform to address the above the challenges. To our knowledge, this is the first drone camera system which can autonomously capture cinematic shots of action scenes based on limb movements in both indoor and outdoor environments. Our system includes the following novelties. First, we propose an efficient method to extract 3D skeleton points via a stereo camera. Second, we design a real-time dynamical camera planning strategy that fulfills the aesthetic objectives for filming and respects the physical limits of a drone. At the system level, we integrate cameras and GPUs into the limited space of a drone and demonstrate the feasibility of running the entire cinematography system onboard in real-time. Experimental results in both simulation and real-world scenarios demonstrate that our cinematography system "ACT" can capture more expressive video footage of human action than that of a stateof- the-art drone camera system.
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关键词
action scenes,aerial filming,autonomous cinematography system,autonomous drone cinematography system,state-of-the-art drone camera system,real-time dynamical camera planning strategy,drone platform,human action,external motion capture systems,drone cinematography systems,aesthetic objectives
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