Implicit Shape
Implicit shape modeling uses neural networks to represent 3D shapes implicitly as functions, often signed distance functions (SDFs), rather than explicitly as meshes or point clouds. Current research focuses on improving the accuracy and efficiency of these representations, particularly through advancements in neural network architectures like multi-scale networks, adversarial training methods, and part-based models that decompose complex shapes into simpler components. This field is significant because it enables efficient 3D shape reconstruction, manipulation, and simulation from limited data, with applications ranging from robotics and computer graphics to medical image analysis and scientific visualization.
Papers
April 21, 2023
March 21, 2023
March 16, 2023
January 25, 2023
August 12, 2022
July 9, 2022
June 4, 2022
May 27, 2022
April 21, 2022
April 4, 2022
March 18, 2022
March 16, 2022
January 31, 2022
January 20, 2022
January 18, 2022
December 10, 2021
November 30, 2021