Print Email Facebook Twitter Robust map building for robot navigation in dynamic environments Title Robust map building for robot navigation in dynamic environments Author Radhakrishnan, Prakash (TU Delft Mechanical, Maritime and Materials Engineering) Contributor Pan, W. (mentor) Tang, Y. (mentor) Alonso Mora, J. (graduation committee) Degree granting institution Delft University of Technology Programme Mechanical Engineering | Vehicle Engineering | Cognitive Robotics Date 2021-09-22 Abstract Simultaneous Localisation and Mapping (SLAM) provide a novel solution for the robots to localise and navigate an unknown environment. Initial SLAM research focused mainly on the indoor environment, assuming the background to be primarily static. In contrast, the real world has dynamic interactions that restrict the implementation of SLAM to limited scenarios. This brings a higher requirement to deal with the moving objects in dynamic environments for robust SLAM performance. Semantic understanding of the environment helps in filtering out the influence of dynamic objects in the vicinity. An instance segmentation based on two-stage neural architecture is used for this purpose, which is hard to operate in real-time navigation. In this project, the benefits of single stage neural architecture are studied in terms of speed and accuracy for improving the efficiency of dynamic features removal in the application of SLAM.Although Instance segmentation architecture helps to identify the potentially dynamic object by learning from the dataset, it cannot differentiate moving objects from non-moving objects in the dynamic class. Hence, all the features corresponding to the predicted dynamic class are removed even when the objects remain stationary, affecting the quality of SLAM performance. A two-stream encoder-decoder architecture is developed to segment the moving masks using RGB and optical flow input, improving feature tracking without affecting robustness. The feasibility of encoding dynamic information to enhance quality semantic mapping is also studied. Subject visual SLAMDynamic object handlingSegmentationMulti-object TrackingSemantic map To reference this document use: http://resolver.tudelft.nl/uuid:0a10f475-5a59-4ad7-9966-24f0f675f863 Part of collection Student theses Document type master thesis Rights © 2021 Prakash Radhakrishnan Files PDF Master_thesis_Prakash_5007224.pdf 17.42 MB Close viewer /islandora/object/uuid:0a10f475-5a59-4ad7-9966-24f0f675f863/datastream/OBJ/view