Lecture

Intro to Quantum Sensing: Parameter Estimation and Fisher Information

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Description

This lecture introduces the concept of Fisher Information, focusing on parameter estimation based on collected data. Topics include the definition of an estimator, the minimum achievable Mean Square Error, the Cramér-Rao lower bound, and the standard quantum limit.

Instructors (3)
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