CVAIMMSep 29, 2025

From Satellite to Street: A Hybrid Framework Integrating Stable Diffusion and PanoGAN for Consistent Cross-View Synthesis

arXiv:2509.24369v1h-index: 6
Originality Synthesis-oriented
AI Analysis

This addresses a domain-specific problem in geospatial data collection and urban analytics, with incremental improvements over existing methods.

The paper tackles the problem of synthesizing street-view images from satellite imagery, which is challenging due to appearance and perspective differences, by proposing a hybrid framework integrating Stable Diffusion and PanoGAN. The approach outperforms diffusion-only methods on the CVUSA dataset and achieves competitive performance with state-of-the-art GAN-based methods, generating realistic and geometrically consistent images with fine details like street markings and clouds.

Street view imagery has become an essential source for geospatial data collection and urban analytics, enabling the extraction of valuable insights that support informed decision-making. However, synthesizing street-view images from corresponding satellite imagery presents significant challenges due to substantial differences in appearance and viewing perspective between these two domains. This paper presents a hybrid framework that integrates diffusion-based models and conditional generative adversarial networks to generate geographically consistent street-view images from satellite imagery. Our approach uses a multi-stage training strategy that incorporates Stable Diffusion as the core component within a dual-branch architecture. To enhance the framework's capabilities, we integrate a conditional Generative Adversarial Network (GAN) that enables the generation of geographically consistent panoramic street views. Furthermore, we implement a fusion strategy that leverages the strengths of both models to create robust representations, thereby improving the geometric consistency and visual quality of the generated street-view images. The proposed framework is evaluated on the challenging Cross-View USA (CVUSA) dataset, a standard benchmark for cross-view image synthesis. Experimental results demonstrate that our hybrid approach outperforms diffusion-only methods across multiple evaluation metrics and achieves competitive performance compared to state-of-the-art GAN-based methods. The framework successfully generates realistic and geometrically consistent street-view images while preserving fine-grained local details, including street markings, secondary roads, and atmospheric elements such as clouds.

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