TL;DR
The paper introduces S3KF, a spherical Kalman filtering framework for panoramic 3D multi-object tracking using LiDAR and fisheye cameras, achieving accurate, real-time tracking in large-scale environments.
Contribution
It proposes a novel geometry-consistent state representation on the unit sphere and a multimodal Kalman filter for panoramic multi-object tracking.
Findings
Decimeter-level planar tracking accuracy achieved.
Improved identity continuity over 2D panoramic baseline.
Real-time onboard operation demonstrated on Jetson AGX Orin.
Abstract
Panoramic multi-object tracking is important for industrial safety monitoring, wide-area robotic perception, and infrastructure-light deployment in large workspaces. In these settings, the sensing system must provide full-surround coverage, metric geometric cues, and stable target association under wide field-of-view distortion and occlusion. Existing image-plane trackers are tightly coupled to the camera projection and become unreliable in panoramic imagery, while conventional Euclidean 3D formulations introduce redundant directional parameters and do not naturally unify angular, scale, and depth estimation. In this paper, we present , a panoramic 3D multi-object tracking framework built on a motorized rotating LiDAR and a quad-fisheye camera rig. The key idea is a geometry-consistent state representation on the unit sphere , where object bearing is…
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