Search this site
Embedded Files
Skip to main content
Skip to navigation
Alireza Esna Ashari
About
Contact
Publications
Research
Semantic Interpretation of Arbitrary Traffic Signs: Semantic Parsing for Ac
Reinforcement learning for autonomous driving
Applications of deep learning in decision making for autonomous driving
Data Mining on Feet data to Enhance Future Driver Assistance Systems
Active fault detection
Application of matrix perturbation theory in robust control of large-scale systems
Distributed estimation and fault detection
Improving the subspace-based fault detection methods using input data and auxiliary inputs
Reconfigurable control using eigenstructure assignment
Alireza Esna Ashari
About
Contact
Publications
Research
Semantic Interpretation of Arbitrary Traffic Signs: Semantic Parsing for Ac
Reinforcement learning for autonomous driving
Applications of deep learning in decision making for autonomous driving
Data Mining on Feet data to Enhance Future Driver Assistance Systems
Active fault detection
Application of matrix perturbation theory in robust control of large-scale systems
Distributed estimation and fault detection
Improving the subspace-based fault detection methods using input data and auxiliary inputs
Reconfigurable control using eigenstructure assignment
More
About
Contact
Publications
Research
Semantic Interpretation of Arbitrary Traffic Signs: Semantic Parsing for Ac
Reinforcement learning for autonomous driving
Applications of deep learning in decision making for autonomous driving
Data Mining on Feet data to Enhance Future Driver Assistance Systems
Active fault detection
Application of matrix perturbation theory in robust control of large-scale systems
Distributed estimation and fault detection
Improving the subspace-based fault detection methods using input data and auxiliary inputs
Reconfigurable control using eigenstructure assignment
Applications of deep learning in decision making for autonomous driving
Coming soon!
Google Sites
Report abuse
Page details
Page updated
Google Sites
Report abuse