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Research Fellow (VIO/LIO & State Estimation)

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National University of Singapore (NUS)

Kent Ridge Campus

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Research Fellow (VIO/LIO & State Estimation)

Research Fellow

2026-06-29

Location

Kent Ridge Campus

National University of Singapore

Type

Research Staff (Fixed Term)

Start Date

2026-04-22

Required Qualifications

Ph.D. in EE/CS/Robotics
LIO/VIO Expertise
State Estimation/SLAM
C++/Python/ROS
UAV Systems (PX4)
Strong Publications

Research Areas

LiDAR-Inertial Odometry (LIO)
Visual-Inertial Odometry (VIO)
Multi-Sensor Fusion
Meta-Learning State Estimation
Agile Mobile Robots/UAVs
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Research Fellow (VIO/LIO & State Estimation)

Research Fellow (VIO/LIO & State Estimation)

University-Level Unit: College of Design and Engineering

Faculty/Department-Level Unit: Electrical and Computer Engineering

Employee Category: Research Staff

Location: Kent Ridge Campus

Posting Start Date: 22/04/2026

Job Description

A Research Fellow position is open in a research lab at the Department of Electrical and Computer Engineering, National University of Singapore (NUS).

The Research Fellow will work closely with the Principal Investigator (PI) on the project “Meta-Learning of Robust State Estimation for Agile Mobile Robots.” The position focuses on advancing state estimation and odometry for robotic systems, with particular emphasis on LiDAR-Inertial Odometry (LIO), Visual-Inertial Odometry (VIO), and multi-sensor fusion for UAVs and other agile platforms.

The Research Fellow will develop high-performance, robust estimation algorithms that operate reliably in challenging environments (e.g., low texture, illumination variation, dynamic scenes, or sensor degradation). The research will integrate model-based estimation methods (e.g., filtering, factor graph optimization, moving horizon estimation) with learning-enhanced components, including meta-learning approaches for adaptive and generalizable estimation.

The candidate will be responsible for both theoretical development and system-level implementation, including real-time deployment on robotic platforms. The developed algorithms will be validated through simulation and real-world experiments, particularly on UAV systems.

In addition, the Research Fellow is expected to contribute to mentoring junior PhD students and supporting research activities within the project.

The initial appointment duration is 12 months, which can then be extended based on an evaluation at the end of the initial appointment.

The candidate should have a Ph.D. degree from a reputable university, with expertise in robotic state estimation, SLAM, or perception for autonomous systems.

A successful candidate should have a strong mathematical background (e.g., linear algebra, optimization, probability, stochastic processes), and a strong publication record in top-tier venues.

Qualifications

  • Possess a Ph.D. degree in Electrical Engineering or related disciplines (e.g., Computer Science, Robotics, Mechanical Engineering, Aerospace, Mathematics).
  • Have substantial research experience in robotic state estimation, SLAM, or odometry systems.
  • Strong expertise in LiDAR-Inertial Odometry (LIO), Visual-Inertial Odometry (VIO), or multi-sensor fusion.
  • Solid understanding of estimation and optimization frameworks, including EKF/UKF, factor graph optimization, bundle adjustment, or moving horizon estimation (MHE).
  • Experience with real-time perception systems and deployment on robotic platforms.
  • Proficient in C++ or Python; experience with ROS and robotic middleware.
  • Familiar with UAV systems (e.g., PX4), and simulation environments such as Gazebo or AirSim.
  • Experience with sensor calibration, time synchronization, and system integration is highly desirable.
  • Strong publication record in leading journals and conferences in robotics, control, or machine learning.
  • Excellent communication skills and ability to independently publish and present research outcomes.
  • Demonstrated ability to supervise students or contribute to research leadership is preferred.
  • Experience in world-class research environments is highly valued.
  • Open to Fixed Term Contract

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Frequently Asked Questions

🎓What qualifications are required for this Research Fellow position at NUS?

Candidates must hold a Ph.D. in Electrical Engineering, Computer Science, Robotics, Mechanical Engineering, Aerospace, or Mathematics. Substantial experience in robotic state estimation, SLAM, LIO, or VIO is essential, along with a strong publication record in top robotics venues. Explore more research jobs or postdoc success tips.

🔬What are the key responsibilities in VIO/LIO state estimation research?

The role involves developing robust state estimation algorithms using LIO, VIO, and multi-sensor fusion for UAVs and agile robots. Responsibilities include theoretical development, real-time implementation with EKF/UKF, factor graph optimization, meta-learning integration, and validation via simulations (Gazebo/AirSim) and real-world experiments. Mentoring junior PhD students is also required. See related research assistant roles.

💻What technical skills are needed for this NUS Research Fellow job?

Proficiency in C++ or Python, ROS, and robotic middleware is required. Experience with UAV systems (e.g., PX4), sensor calibration, Gazebo/AirSim simulations, and frameworks like factor graph optimization or MHE is highly desirable. Background in challenging environments (low texture, dynamic scenes) is key. Check research assistant skills guide.

What is the contract duration and extension process?

The initial appointment is 12 months, extendable based on performance evaluation. It is a fixed-term contract in the Department of Electrical and Computer Engineering at NUS Kent Ridge Campus. Open to research staff committed to long-term projects. View postdoc positions for similar terms.

📝How to apply for this VIO/LIO State Estimation Research Fellow role?

Applications are open until 2026-06-29. Submit via the NUS portal with CV highlighting publications, research experience in state estimation, and references. Strong communication skills for publishing/presenting are valued. Posting starts 22/04/2026. Learn more about writing a winning academic CV.

🚀What research areas does this position focus on at NUS?

Focus on Meta-Learning of Robust State Estimation for agile mobile robots, emphasizing LIO, VIO, multi-sensor fusion, and learning-enhanced methods (filtering, factor graphs, MHE) for challenging environments. Validation on UAV platforms. Ideal for experts in robotics perception. Browse NUS research opportunities.

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