3D Keypoints
3D keypoint detection aims to identify and locate salient points on three-dimensional objects, crucial for tasks like pose estimation, shape registration, and robotic manipulation. Current research emphasizes unsupervised and self-supervised learning methods, often employing autoencoder frameworks, graph convolutional networks, or diffusion models to achieve robust keypoint detection even in challenging scenarios like object deformation, occlusion, and noisy data. These advancements are driving improvements in applications ranging from human-robot interaction and autonomous driving to medical image analysis and virtual/augmented reality, where accurate 3D understanding is paramount.
Papers
GPU optimization of the 3D Scale-invariant Feature Transform Algorithm and a Novel BRIEF-inspired 3D Fast Descriptor
Jean-Baptiste Carluer, Laurent Chauvin, Jie Luo, William M. Wells, Ines Machado, Rola Harmouche, Matthew Toews
End-to-End Learning of Multi-category 3D Pose and Shape Estimation
Yigit Baran Can, Alexander Liniger, Danda Pani Paudel, Luc Van Gool