Massimiliano Donnarumma
Human trajectory predictor for indoor mobile robot applications.
Rel. Massimo Violante, Andrea Marchese. Politecnico di Torino, Corso di laurea magistrale in Mechatronic Engineering (Ingegneria Meccatronica), 2021
Abstract
The present dissertation aims at implementing a C++ real time human trajectory predictor for autonomous mobile robots in indoor unstructured environments. The main objectives of the prediction system are the optimization of the robot path planning process and the improvement of the robot ability to safely coexist with the surrounding human beings. To make the robot aware of the future behaviour of the people, the proposed software package first generates a prediction taking into account the human-human, the human-scene and the human-robot interactions and then makes the obtained information available to the robot planner by inserting proper cost areas into those locations of the navigation costmap that are believed to be crossed by the pedestrians over the next 2.4 s; thanks to these additional costs, the robot is induced to avoid the crossed areas, and no trajectory superposition takes place.
The forecasting algorithm generates the predictions exploiting three main types of input: the current and past pedestrians’ states (i.e
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