Photometric Stereo
Photometric stereo is a computer vision technique that reconstructs 3D surface shape from multiple images of an object taken under varying lighting conditions. Current research emphasizes improving accuracy and efficiency, particularly through the development of deep learning-based methods, including neural networks that leverage multi-view data, attention mechanisms, and physically-based rendering models to handle complex reflectance properties and challenging lighting scenarios. These advancements are significant for applications ranging from cultural heritage preservation (e.g., analyzing ancient artifacts) to robotics and autonomous navigation (e.g., 3D mapping of small celestial bodies), where accurate and efficient 3D shape recovery is crucial.
Papers
Image Segmentation from Shadow-Hints using Minimum Spanning Trees
Moritz Heep, Eduard Zell
SymmeTac: Symmetric Color LED Driven Efficient Photometric Stereo Reconstruction Methods for Camera-based Tactile Sensors
Jieji Ren, Heng Guo, Zaiyan Yang, Jinnuo Zhang, Yueshi Dong, Ningbin Zhang, Boxin Shi, Jiang Zou, Guoying Gu