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Solving the Indoor SLAM Problem for a Low-Cost Robot Using Sensor Data Fusion and Autonomous Feature-Based Exploration PhD Student: Prof. MSc. Luciano.

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Presentation on theme: "Solving the Indoor SLAM Problem for a Low-Cost Robot Using Sensor Data Fusion and Autonomous Feature-Based Exploration PhD Student: Prof. MSc. Luciano."— Presentation transcript:

1 Solving the Indoor SLAM Problem for a Low-Cost Robot Using Sensor Data Fusion and Autonomous Feature-Based Exploration PhD Student: Prof. MSc. Luciano Buonocore (UFMA) Advisor: Prof. Dr. Cairo Lúcio Nascimento Júnior (ITA) Three software modules run in an integrated form Environment features measured 3 motions using Odometric model from goal selected Estimated map at the moment

2 - 3 types of sensors: a)Visual (wireless CAM + Laser) b)Infrared (two units) c)Sonar - Softwares: a)PC: overall system intelligence (SLAM filter, Data fusion and Autonomous Exploration). b) Robot: Mutli-Threading C code that executes basic commands, distance measures and some status. - Communication PC-robot: IP Wireless.

3 PROPOSED SENSOR DATA FUSION ALGORITHM Experiment to evaluate the mapping accuracy of the algorithm

4 PROPOSED AUTONOMOUS FEATURE-BASED EXPLORATION Basic tasks: a)Goals select →locally (1) or environment opening (2) b)Finish condition (of the exploration task)

5 SLAM EXPERIMENT IN A SMALL INDOOR ENVIRONMENT WITHOUT AUTONOMOUS EXPLORATIONWITH AUTONOMOUS EXPLORATION RESULTS: The estimated and real robot poses differences in both experiments are less than 2%. The map generated by the filter are similar and consistent for navigation purpose. NEXT EXPERIMENT: The solution to SLAM problem is already in progress (hallway of 80 m with some loops situations) to validate the algorithms proposed.

6 EXAMPLE OF DATA PROCESSING IN FUSION ALGORITHM FOR AN SPECIFIC ROBOT POSE


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