Autonomous Robots Lab
Autonomous Robots Lab
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Chang Liu
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Online Action Change Detection for Automatic Vision-based Ground Control of Aircraft
Adaptive online distributed optimal control of very-large-scale robotic systems
Mixed reinforcement learning for efficient policy optimization in stochastic environments
Rumor-robust Decentralized Gaussian Process Learning, Fusion, and Planning for Modeling Multiple Moving Targets
Learning recursive bayesian nonparametric modeling of moving targets via mobile decentralized sensors
Vision-guided planning and control for autonomous taxiing via convolutional neural networks
Distributed Bayesian Filter Using Measurement Dissemination for Multiple Unmanned Ground Vehicles With Dynamically Changing Interaction Topologies
Kalman filter-based tracking of moving objects using linear ultrasonic sensor array for road vehicles
Scene understanding in deep learning-based end-to-end controllers for autonomous vehicles
Distributed Bayesian filters for multi-vehicle network by using Latest-In-and-Full-Out exchange protocol of measurements
Feature analysis and selection for training an end-to-end autonomous vehicle controller using deep learning approach
How much data are enough? A statistical approach with case study on longitudinal driving behavior
Learning a deep neural net policy for end-to-end control of autonomous vehicles
Measurement dissemination-based distributed Bayesian filter using the latest-in-and-full-out exchange protocol for networked unmanned vehicles
Model predictive control-based target search and tracking using autonomous mobile robot with limited sensing domain
Path planning for autonomous vehicles using model predictive control
Pragmatic-pedagogic value alignment
Cooperative search using human-UAV teams
Distributed target localization using a group of UGVs under dynamically changing interaction topologies
Dynamical tracking of surrounding objects for road vehicles using linearly-arrayed ultrasonic sensors
Generating plans that predict themselves
Goal Inference Improves Objective and Perceived Performance in Human-Robot Collaboration
Human-centered feed-forward control of a vehicle steering system based on a driver's path-following characteristics
Parallel interacting multiple model-based human motion prediction for motion planning of companion robots
Interacting multiple model-based human motion prediction for motion planning of companion robots
Model predictive control-based probabilistic search method for autonomous ground robot in a dynamic environment
A framework for autonomous vehicles with goal inference and task allocation capabilities to support peer collaboration with human agents
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