CVOct 10, 2022

HORIZON: High-Resolution Semantically Controlled Panorama Synthesis

arXiv:2210.04522v23 citationsh-index: 42
Originality Incremental advance
AI Analysis

This work addresses the challenge of generating high-resolution, semantically controlled panoramas for virtual reality and immersive applications, representing an incremental improvement over existing methods.

The paper tackled the problem of semantically controlling panorama synthesis to avoid distortion and edge discontinuity, achieving superior quantitative and qualitative performance on indoor and outdoor datasets.

Panorama synthesis endeavors to craft captivating 360-degree visual landscapes, immersing users in the heart of virtual worlds. Nevertheless, contemporary panoramic synthesis techniques grapple with the challenge of semantically guiding the content generation process. Although recent breakthroughs in visual synthesis have unlocked the potential for semantic control in 2D flat images, a direct application of these methods to panorama synthesis yields distorted content. In this study, we unveil an innovative framework for generating high-resolution panoramas, adeptly addressing the issues of spherical distortion and edge discontinuity through sophisticated spherical modeling. Our pioneering approach empowers users with semantic control, harnessing both image and text inputs, while concurrently streamlining the generation of high-resolution panoramas using parallel decoding. We rigorously evaluate our methodology on a diverse array of indoor and outdoor datasets, establishing its superiority over recent related work, in terms of both quantitative and qualitative performance metrics. Our research elevates the controllability, efficiency, and fidelity of panorama synthesis to new levels.

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