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📄 Abstract
Abstract: 360-degree visual content is widely shared on platforms such as YouTube and
plays a central role in virtual reality, robotics, and autonomous navigation.
However, consumer-grade dual-fisheye systems consistently yield imperfect
panoramas due to inherent lens separation and angular distortions. In this
work, we introduce a novel calibration framework that incorporates a
dual-fisheye camera model into the 3D Gaussian splatting pipeline. Our approach
not only simulates the realistic visual artifacts produced by dual-fisheye
cameras but also enables the synthesis of seamlessly rendered 360-degree
images. By jointly optimizing 3D Gaussian parameters alongside calibration
variables that emulate lens gaps and angular distortions, our framework
transforms imperfect omnidirectional inputs into flawless novel view synthesis.
Extensive evaluations on real-world datasets confirm that our method produces
seamless renderings-even from imperfect images-and outperforms existing
360-degree rendering models.