The Stanford University report highlighted the work in the second chapter, which examines a wide range of artificial intelligence capabilities — from language processing to reinforcement learning. The authors of the report stressed that the new dataset contains 1.4 million images taken from 100 different angles with 14 types of lighting.
“The key technology for automating dataset collection is the use of a collaborative robot with 6 degrees of freedom. The robot positioned the cameras in space with an accuracy of 0.1 mm. The robot has generated 100 camera angles for each object. We have also developed a lighting system that provides 14 modes of operation. The movement of the manipulator, shooting with multimodal cameras, and lighting were synchronized and controlled from the server. The process of digitizing 3D objects can now be fully automated with these technologies, and in the future, they will aid in the expansion of the Skoltech3D three-dimensional image dataset,” said Dzmitry Tsetserukou, an associate professor and the head of the Skoltech Intellectual Space Robotics Laboratory.
3D reconstruction of objects is popular in many areas today. For example, a team of scientists led by the director of the AI Center, Professor Evgeny Burnaev, together with the Russian State Historical Museum took part in a project to create 3D digital copies of the most interesting objects in St. Basil’s Cathedral. The project aimed to make a digital 3D model of the cathedral to organize virtual exhibitions.
“In addition to preserving cultural and historical heritage, 3D reconstruction holds significant implications in diverse fields, including medicine. It can help make a three-dimensional model of the organ and plan an operation on the patient based on this model, and not on photographs with markings. Such methods are also popular in business and on marketplaces. Instead of a photo of the product, you can show its 3D model, which you can rotate and examine. A potential buyer can even walk around the model of their future apartment,” adds Oleg Voynov.
As the authors noted, the team continues to work on using a unique dataset to develop new, comprehensive 3D reconstruction methods.