Presentation
UltraZoom: Generating Gigapixel Images from Regular Photos
DescriptionWe present UltraZoom, a system for generating gigapixel-resolution images of objects from casually captured inputs, such as handheld phone photos. Given a full-shot image (global, low-detail) and one or more close-ups (local, high-detail), UltraZoom upscales the full image to match the fine detail and scale of the close-up examples. To achieve this, we construct a per-instance paired dataset from the close-ups and adapt a pretrained generative model to learn object-specific low-to-high resolution mappings. At inference, we apply the model in a sliding window fashion over the full image. Constructing these pairs is non-trivial: it requires registering the close-ups within the
full image for scale estimation and degradation alignment. We introduce a simple, robust method for achieving registration on arbitrary materials in casual, in-the-wild captures. Together, these components form a system that enables seamless pan and zoom across the entire object, producing
consistent, photorealistic gigapixel imagery from minimal input. For full-resolution results and code, visit our project page at ultra-zoom.github.io.
full image for scale estimation and degradation alignment. We introduce a simple, robust method for achieving registration on arbitrary materials in casual, in-the-wild captures. Together, these components form a system that enables seamless pan and zoom across the entire object, producing
consistent, photorealistic gigapixel imagery from minimal input. For full-resolution results and code, visit our project page at ultra-zoom.github.io.

Event Type
Technical Papers
TimeTuesday, 16 December 202511:34am - 11:45am HKT
LocationMeeting Room S423+S424, Level 4
