פברואר 10, 1996 - פברואר 10, 2029

  • Date:18חמישידצמבר 2025

    Vision and AI

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    שעה
    12:15 - 13:15
    כותרת
    Bridging Generative Models and Physical Priors for 3D Reconstruction
    מיקום
    בניין יעקב זיסקינד
    Lecture Hall - Room 1 - אולם הרצאות חדר 1
    מרצהDor Verbin
    Google DeepMind
    מארגן
    המחלקה למדעי המחשב ומתמטיקה שימושית
    צרו קשר
    תקצירShow full text abstract about Recent years have brought remarkable progress in 3D vision p...»
    Recent years have brought remarkable progress in 3D vision problems like view synthesis and inverse rendering. Despite these advancements, substantial challenges remain in material and lighting decomposition, geometry estimation, and view synthesis—particularly when handling a wide range of materials. In this talk, I will outline a few of these problems and present solutions that combine the principled structure and efficiency of physics-based rendering with the strong priors encoded in generative image and video models.

    Bio:

    Dor Verbin is a research scientist at Google DeepMind in San Francisco, where he works on computer vision, computer graphics, and machine learning. He received his Ph.D. in computer science from Harvard University. Previously, he received a double B.Sc. in physics and in electrical engineering from Tel Aviv University, after which he worked as a researcher at Camerai, developing real-time computer vision algorithms for mobile devices. He received the Best Student Paper Honorable Mention award at CVPR 2022.
    הרצאה