3D Point Cloud
3D point clouds are collections of 3D data points representing objects or scenes, commonly used in various applications requiring spatial understanding. Current research focuses on improving the efficiency and accuracy of processing these data, particularly through advancements in deep learning architectures like transformers and graph neural networks, and the development of novel algorithms for tasks such as segmentation, classification, compression, and denoising. These advancements are driving progress in fields ranging from autonomous driving and robotics to medical imaging and industrial inspection, enabling more robust and efficient solutions for 3D data analysis.
Papers
3DMODT: Attention-Guided Affinities for Joint Detection & Tracking in 3D Point Clouds
Jyoti Kini, Ajmal Mian, Mubarak Shah
Fast Staircase Detection and Estimation using 3D Point Clouds with Multi-detection Merging for Heterogeneous Robots
Prasanna Sriganesh, Namya Bagree, Bhaskar Vundurthy, Matthew Travers