Learning State-Dependent Sensor Measurement Model for Localization

Tech ID: 18A095

Competitive Advantages

  • Utilizes a stochastic approach
  • Accurately estimates noise
  • Accurately estimates measurement bias
  • Does not require a precomputed noise covariance

Summary

USF inventors have devised a novel concept called stochastic perception or the ability for a robot to dynamically estimate the measurement model given the states of a robot and its environment. This method uses conditional probabilistic model to train itself and later predict the measurement model. This novel concept has a wide range of applications in the field of robotics, as it helps to estimate the measurement model given the states of a robot and its environment.

Robots and Landmarks Used to Collect Data Set

 

Desired Partnerships

  • License
  • Sponsored Research
  • Co-Development 

 

Technology Transfer
TTOinfo@usf.edu
(813) 974-0994

Researcher(s)

Patents