ROAIHCLGApr 4, 2019

Can a Robot Become a Movie Director? Learning Artistic Principles for Aerial Cinematography

arXiv:1904.02579v252 citations
AI Analysis

This work addresses the challenge of automating artistic drone filming without human guidance, which is incremental as it builds on existing motion planning and reinforcement learning methods.

The authors tackled the problem of autonomous aerial cinematography by developing a deep reinforcement learning agent that selects desirable shot modes based on aesthetical values, and they demonstrated its generalization to real-world conditions with a user study evaluating shot quality.

Aerial filming is constantly gaining importance due to the recent advances in drone technology. It invites many intriguing, unsolved problems at the intersection of aesthetical and scientific challenges. In this work, we propose a deep reinforcement learning agent which supervises motion planning of a filming drone by making desirable shot mode selections based on aesthetical values of video shots. Unlike most of the current state-of-the-art approaches that require explicit guidance by a human expert, our drone learns how to make favorable viewpoint selections by experience. We propose a learning scheme that exploits aesthetical features of retrospective shots in order to extract a desirable policy for better prospective shots. We train our agent in realistic AirSim simulations using both a hand-crafted reward function as well as reward from direct human input. We then deploy the same agent on a real DJI M210 drone in order to test the generalization capability of our approach to real world conditions. To evaluate the success of our approach in the end, we conduct a comprehensive user study in which participants rate the shot quality of our methods. Videos of the system in action can be seen at https://youtu.be/qmVw6mfyEmw.

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