CVITIVSTAPJan 30, 2025

A New Statistical Approach to the Performance Analysis of Vision-based Localization

arXiv:2501.18758v1h-index: 55
Originality Incremental advance
AI Analysis

This addresses localization challenges for wireless devices in scenarios where wireless positioning is unreliable, though it appears incremental as it builds on existing geometric and statistical methods.

The paper tackles the problem of vision-based localization when landmarks are visually indistinguishable by proposing a framework that uses range measurements to multiple landmarks and models them as a marked Poisson point process, showing that three noise-free measurements uniquely determine the correct landmark combination in 2D and providing a mathematical characterization for noisy cases.

Many modern wireless devices with accurate positioning needs also have access to vision sensors, such as a camera, radar, and Light Detection and Ranging (LiDAR). In scenarios where wireless-based positioning is either inaccurate or unavailable, using information from vision sensors becomes highly desirable for determining the precise location of the wireless device. Specifically, vision data can be used to estimate distances between the target (where the sensors are mounted) and nearby landmarks. However, a significant challenge in positioning using these measurements is the inability to uniquely identify which specific landmark is visible in the data. For instance, when the target is located close to a lamppost, it becomes challenging to precisely identify the specific lamppost (among several in the region) that is near the target. This work proposes a new framework for target localization using range measurements to multiple proximate landmarks. The geometric constraints introduced by these measurements are utilized to narrow down candidate landmark combinations corresponding to the range measurements and, consequently, the target's location on a map. By modeling landmarks as a marked Poisson point process (PPP), we show that three noise-free range measurements are sufficient to uniquely determine the correct combination of landmarks in a two-dimensional plane. For noisy measurements, we provide a mathematical characterization of the probability of correctly identifying the observed landmark combination based on a novel joint distribution of key random variables. Our results demonstrate that the landmark combination can be identified using ranges, even when individual landmarks are visually indistinguishable.

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