暦本 純一
Chief Science Officer / Fellow
Shitanda, Naoki and Rekimoto, Jun
We propose a novel method to reconstruct 3D Gaussian scene from images that contain both static and dynamic distractors, e.g., vehicles and pedestrians, by using text-guided segmentation and inpainting techniques. Our approach generates masks for distractors, detects heavily masked regions and inpaints them to suppress defects and artifacts for scene optimization while ignoring distractors.
Chief Science Officer / Fellow