Area MaPPing
Area mapping encompasses the creation of spatial representations of environments using various sensor data, aiming for accurate localization and robust mapping in diverse conditions. Current research emphasizes improving the accuracy and efficiency of mapping algorithms, particularly through the integration of deep learning for feature extraction and improved outlier rejection, and the use of multi-sensor fusion (e.g., LiDAR, cameras, UWB) to enhance robustness. These advancements are crucial for autonomous systems in various fields, including robotics, autonomous vehicles, and environmental monitoring, enabling more reliable navigation and scene understanding.
Papers
FLOGA: A machine learning ready dataset, a benchmark and a novel deep learning model for burnt area mapping with Sentinel-2
Maria Sdraka, Alkinoos Dimakos, Alexandros Malounis, Zisoula Ntasiou, Konstantinos Karantzalos, Dimitrios Michail, Ioannis Papoutsis
Mapping of Land Use and Land Cover (LULC) using EuroSAT and Transfer Learning
Suman Kunwar, Jannatul Ferdush
math-PVS: A Large Language Model Framework to Map Scientific Publications to PVS Theories
Hassen Saidi, Susmit Jha, Tuhin Sahai
Mapping the Empirical Evidence of the GDPR (In-)Effectiveness: A Systematic Review
Wenlong Li, Zihao Li, Wenkai Li, Yueming Zhang, Aolan Li
Mapping the magnetic field using a magnetometer array with noisy input Gaussian process regression
Thomas Edridge, Manon Kok
Exploring a new machine learning based probabilistic model for high-resolution indoor radon mapping, using the German indoor radon survey data
Eric Petermann, Peter Bossew, Joachim Kemski, Valeria Gruber, Nils Suhr, Bernd Hoffmann
Tracking and Mapping in Medical Computer Vision: A Review
Adam Schmidt, Omid Mohareri, Simon DiMaio, Michael C. Yip, Septimiu E. Salcudean
Simultaneous Trajectory Estimation and Mapping for Autonomous Underwater Proximity Operations
Aldo Terán Espinoza, Antonio Terán Espinoza, John Folkesson, Niklas Rolleberg, Peter Sigray, Jakob Kuttenkeuler
Object-Oriented Grid Mapping in Dynamic Environments
Matti Pekkanen, Francesco Verdoja, Ville Kyrki