Object Shape
Object shape research focuses on accurately representing and reconstructing 3D shapes from various data sources, including images, point clouds, and sensor readings, with applications ranging from robotics to medical imaging. Current research emphasizes developing robust methods for shape estimation in challenging scenarios like occlusion and deformation, often employing deep learning architectures such as GANs, neural networks (including UNets and transformers), and diffusion models, alongside techniques like Procrustes analysis and spectral methods. These advancements improve the accuracy and efficiency of 3D shape modeling, impacting fields like automated crop monitoring, human pose estimation, and the design of physically realistic virtual and robotic systems.
Papers
Disentangling 3D Attributes from a Single 2D Image: Human Pose, Shape and Garment
Xue Hu, Xinghui Li, Benjamin Busam, Yiren Zhou, Ales Leonardis, Shanxin Yuan
Analyzing the Impact of Shape & Context on the Face Recognition Performance of Deep Networks
Sandipan Banerjee, Walter Scheirer, Kevin Bowyer, Patrick Flynn
SAMURAI: Shape And Material from Unconstrained Real-world Arbitrary Image collections
Mark Boss, Andreas Engelhardt, Abhishek Kar, Yuanzhen Li, Deqing Sun, Jonathan T. Barron, Hendrik P. A. Lensch, Varun Jampani
Mask2Hand: Learning to Predict the 3D Hand Pose and Shape from Shadow
Li-Jen Chang, Yu-Cheng Liao, Chia-Hui Lin, Hwann-Tzong Chen