LiDAR Data
LiDAR data, representing three-dimensional point clouds of the environment, is crucial for applications like autonomous driving and robotics, primarily aiming to achieve accurate scene understanding and object detection. Current research focuses on improving data quality through denoising techniques and motion correction algorithms, often integrating LiDAR with other sensor modalities (e.g., cameras, radar, IMUs) and employing advanced architectures like transformers and neural radiance fields for processing and analysis. These advancements are driving significant improvements in the accuracy and robustness of 3D perception, with broad implications for various fields including autonomous navigation, mapping, and environmental monitoring.
Papers
PointPillars Backbone Type Selection For Fast and Accurate LiDAR Object Detection
Konrad Lis, Tomasz Kryjak
Hyperspectral and LiDAR data for the prediction via machine learning of tree species, volume and biomass: a possible contribution for updating forest management plans
Daniele Michelini, Michele Dalponte, Angelo Carriero, Erico Kutchart, Salvatore Eugenio Pappalardo, Massimo De Marchi, Francesco Pirotti