Point Cloud
Point clouds are collections of 3D data points representing objects or scenes, primarily used for tasks like 3D reconstruction, object recognition, and autonomous navigation. Current research focuses on improving the efficiency and robustness of point cloud processing, employing techniques like deep learning (e.g., transformers, convolutional neural networks), optimal transport, and Gaussian splatting for tasks such as registration, completion, and compression. These advancements are crucial for applications ranging from robotics and autonomous driving to medical imaging and cultural heritage preservation, enabling more accurate and efficient analysis of complex 3D data.
Papers
Pattern-Aware Data Augmentation for LiDAR 3D Object Detection
Jordan S. K. Hu, Steven L. Waslander
CT-block: a novel local and global features extractor for point cloud
Shangwei Guo, Jun Li, Zhengchao Lai, Xiantong Meng, Shaokun Han
Point Cloud Instance Segmentation with Semi-supervised Bounding-Box Mining
Yongbin Liao, Hongyuan Zhu, Yanggang Zhang, Chuangguan Ye, Tao Chen, Jiayuan Fan
diffConv: Analyzing Irregular Point Clouds with an Irregular View
Manxi Lin, Aasa Feragen
Multi-instance Point Cloud Registration by Efficient Correspondence Clustering
Weixuan Tang, Danping Zou
VPFNet: Improving 3D Object Detection with Virtual Point based LiDAR and Stereo Data Fusion
Hanqi Zhu, Jiajun Deng, Yu Zhang, Jianmin Ji, Qiuyu Mao, Houqiang Li, Yanyong Zhang