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Poster
in
Workshop: Machine Learning and the Physical Sciences

Rethinking the modeling of the instrumental response of telescopes with a differentiable optical model

Tobias Liaudat · Jean-Luc Starck


Abstract:

We propose a paradigm shift in the data-driven modeling of the instrumental response field of telescopes. By adding a differentiable optical forward model into the modeling framework, we change the data-driven modeling space from the pixels to the wavefront. This allows to transfer a great deal of complexity from the instrumental response into the forward model while being able to adapt to the observations, remaining data-driven. Our framework allows to build powerful models that are physically motivated, interpretable, and that do not require special calibration data. We show that for a realistic setting of the Euclid space telescope, this framework represents a real performance breakthrough with reconstruction errors decreasing 5 times at observation resolution and more than 10 times for a 3x super-resolution. We successfully model chromatic variations of the instrument's response only using noisy broad-band in-focus observations.

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