Automated Discovery of Continuous Dynamics from Videos
- URL: http://arxiv.org/abs/2410.11894v1
- Date: Mon, 14 Oct 2024 03:37:02 GMT
- Title: Automated Discovery of Continuous Dynamics from Videos
- Authors: Kuang Huang, Dong Heon Cho, Boyuan Chen,
- Abstract summary: We propose an approach to discover a set of state variables that preserve the smoothness of the system dynamics.
We construct a vector field representing the system's dynamics equation, automatically from video streams without prior physical knowledge.
- Score: 4.690264156292023
- License:
- Abstract: Dynamical systems form the foundation of scientific discovery, traditionally modeled with predefined state variables such as the angle and angular velocity, and differential equations such as the equation of motion for a single pendulum. We propose an approach to discover a set of state variables that preserve the smoothness of the system dynamics and to construct a vector field representing the system's dynamics equation, automatically from video streams without prior physical knowledge. The prominence and effectiveness of the proposed approach are demonstrated through both quantitative and qualitative analyses of various dynamical systems, including the prediction of characteristic frequencies and the identification of chaotic and limit cycle behaviors. This shows the potential of our approach to assist human scientists in scientific discovery.
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