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FisheyeGaussianLift: BEV Feature Lifting for Surround-View Fisheye Camera Perception

Published: November 21, 2025 | arXiv ID: 2511.17210v1

By: Shubham Sonarghare , Prasad Deshpande , Ciaran Hogan and more

Potential Business Impact:

Helps cars see better from wide-angle cameras.

Business Areas:
Image Recognition Data and Analytics, Software

Accurate BEV semantic segmentation from fisheye imagery remains challenging due to extreme non-linear distortion, occlusion, and depth ambiguity inherent to wide-angle projections. We present a distortion-aware BEV segmentation framework that directly processes multi-camera high-resolution fisheye images,utilizing calibrated geometric unprojection and per-pixel depth distribution estimation. Each image pixel is lifted into 3D space via Gaussian parameterization, predicting spatial means and anisotropic covariances to explicitly model geometric uncertainty. The projected 3D Gaussians are fused into a BEV representation via differentiable splatting, producing continuous, uncertainty-aware semantic maps without requiring undistortion or perspective rectification. Extensive experiments demonstrate strong segmentation performance on complex parking and urban driving scenarios, achieving IoU scores of 87.75% for drivable regions and 57.26% for vehicles under severe fisheye distortion and diverse environmental conditions.

Page Count
8 pages

Category
Computer Science:
CV and Pattern Recognition