CVJul 15, 2024

Success Probability in Multi-View Imaging

arXiv:2407.21027v11 citationsh-index: 45
Originality Synthesis-oriented
AI Analysis

This addresses the challenge of ensuring reliable 3D recovery in imaging systems like robots and satellites, but it is incremental as it builds on existing self-calibration methods.

The paper tackles the problem of probabilistic success in multi-view imaging due to random camera pointing noise, and develops a framework to analyze system limitations like resolution and efficiency, demonstrating it with a nanosatellite formation design for 3D cloud reconstruction.

Platforms such as robots, security cameras, drones and satellites are used in multi-view imaging for three-dimensional (3D) recovery by stereoscopy or tomography. Each camera in the setup has a field of view (FOV). Multi-view analysis requires overlap of the FOVs of all cameras, or a significant subset of them. However, the success of such methods is not guaranteed, because the FOVs may not sufficiently overlap. The reason is that pointing of a camera from a mount or platform has some randomness (noise), due to imprecise platform control, typical to mechanical systems, and particularly moving systems such as satellites. So, success is probabilistic. This paper creates a framework to analyze this aspect. This is critical for setting limitations on the capabilities of imaging systems, such as resolution (pixel footprint), FOV, the size of domains that can be captured, and efficiency. The framework uses the fact that imprecise pointing can be mitigated by self-calibration - provided that there is sufficient overlap between pairs of views and sufficient visual similarity of views. We show an example considering the design of a formation of nanosatellites that seek 3D reconstruction of clouds.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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