Geometric Information
Geometric information is crucial for numerous applications, driving research focused on efficiently extracting, representing, and utilizing this information from various data sources, including point clouds, meshes, and images. Current research emphasizes developing novel model architectures, such as graph neural networks and generative adversarial networks, to integrate geometric features into existing deep learning frameworks for tasks ranging from 3D scene reconstruction and object detection to robot manipulation and geometric problem-solving. These advancements have significant implications for fields like computer vision, robotics, and CAD design, enabling more robust and accurate systems capable of understanding and interacting with complex 3D environments.
Papers
Orientation-Constrained System for Lamp Detection in Buildings Based on Computer Vision
Francisco Troncoso-Pastoriza, Pablo Eguía-Oller, Rebeca P. Díaz-Redondo, Enrique Granada-Álvarez, Aitor Erkoreka
G-LLaVA: Solving Geometric Problem with Multi-Modal Large Language Model
Jiahui Gao, Renjie Pi, Jipeng Zhang, Jiacheng Ye, Wanjun Zhong, Yufei Wang, Lanqing Hong, Jianhua Han, Hang Xu, Zhenguo Li, Lingpeng Kong