Depth Completion
Depth completion aims to reconstruct dense, high-resolution depth maps from sparse or incomplete depth sensor data, often using accompanying color images as guidance. Current research emphasizes improving accuracy and efficiency through various neural network architectures, including transformers, convolutional neural networks, and diffusion models, often incorporating techniques like attention mechanisms, multi-view fusion, and iterative refinement processes to handle varying sparsity levels and noise. This field is crucial for applications such as autonomous driving, robotics, and 3D scene reconstruction, where accurate depth information is essential for tasks like navigation, object manipulation, and virtual/augmented reality. The ongoing development of robust and efficient depth completion methods is driving advancements in several related areas of computer vision and robotics.
Papers
CompletionFormer: Depth Completion with Convolutions and Vision Transformers
Zhang Youmin, Guo Xianda, Poggi Matteo, Zhu Zheng, Huang Guan, Mattoccia Stefano
Object Semantics Give Us the Depth We Need: Multi-task Approach to Aerial Depth Completion
Sara Hatami Gazani, Fardad Dadboud, Miodrag Bolic, Iraj Mantegh, Homayoun Najjaran