CVMay 22, 2025

Seeing through Satellite Images at Street Views

arXiv:2505.17001v13 citationsh-index: 12IEEE Trans Pattern Anal Mach Intell
Originality Incremental advance
AI Analysis

This addresses the challenge of generating realistic street-level imagery from sparse satellite data, which could benefit applications in urban planning or virtual navigation, though it is an incremental improvement over existing methods.

The paper tackles the problem of synthesizing photorealistic street-view panoramas and videos from satellite images and specified camera positions, achieving results that are consistent across views and faithful to the satellite input.

This paper studies the task of SatStreet-view synthesis, which aims to render photorealistic street-view panorama images and videos given any satellite image and specified camera positions or trajectories. We formulate to learn neural radiance field from paired images captured from satellite and street viewpoints, which comes to be a challenging learning problem due to the sparse-view natural and the extremely-large viewpoint changes between satellite and street-view images. We tackle the challenges based on a task-specific observation that street-view specific elements, including the sky and illumination effects are only visible in street-view panoramas, and present a novel approach Sat2Density++ to accomplish the goal of photo-realistic street-view panoramas rendering by modeling these street-view specific in neural networks. In the experiments, our method is testified on both urban and suburban scene datasets, demonstrating that Sat2Density++ is capable of rendering photorealistic street-view panoramas that are consistent across multiple views and faithful to the satellite image.

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