TY - JOUR AU1 - Balaska, Vasiliki AU2 - Bampis, Loukas AU3 - Katsavounis, Stefanos AU4 - Gasteratos, Antonios AB - Abstract Semantic interpretation of regions or entities is increasingly attracting the attention of scholars, owing to its vast applicability in several disciplines. In this context, modern autonomous systems are capable to semantically recognize and separate entities from camera measurements, while effectively interprete and interact with their environment in a higher level. Extending this notion, the semantic representation of the surroundings, based on satellite and ground-level data, is considered a fundamental property for self-localization, especially in the absence of any georeferencing signal. Keeping that in mind, in this article, we present a robust algorithm to locate the position of an autonomous vehicle within a georeferenced map using graph-based descriptors with semantic and metric information from both its memory and query measurements. In particular, an enhanced prerecorded satellite map is processed to compute semantic memories, whilst ground-level query views are used as a means to identify similarities and extrapolate the location of a moving vehicle. The above components are evaluated under an extensive set of experiments, revealing the robustness and accuracy of our final robot localization system. TI - Generating Graph-Inspired Descriptors by Merging Ground-Level and Satellite Data for Robot Localization JF - Cybernetics & Systems DO - 10.1080/01969722.2022.2073701 DA - 2023-07-04 UR - https://www.deepdyve.com/lp/taylor-francis/generating-graph-inspired-descriptors-by-merging-ground-level-and-cpF0wflBnE SP - 697 EP - 715 VL - 54 IS - 5 DP - DeepDyve ER -