Foundations of Vision-Based Localization: A New Approach to Localizability Analysis Using Stochastic Geometry

Haozhou Hu, Harpreet S. Dhillon, R. Michael Buehrer
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Abstract

Despite significant algorithmic advances in vision-based positioning, a comprehensive probabilistic framework to study its performance has remained unexplored. The main objective of this paper is to develop such a framework using ideas from stochastic geometry. Due to limitations in sensor resolution, the level of detail in prior information, and computational resources, we may not be able to differentiate between landmarks with similar appearances in the vision data, such as trees, lampposts, and bus stops. While one cannot accurately determine the absolute target position using a single indistinguishable landmark, obtaining an approximate position fix is possible if the target can see multiple landmarks whose geometric placement on the map is unique. Modeling the locations of these indistinguishable landmarks as a Poisson point process (PPP) $\Phi$ on $\mathbb{R}^2$, we develop a new approach to analyze the localizability in this setting. From the target location $\mathbb{x}$, the measurements are obtained from landmarks within the visibility region. These measurements, including ranges and angles to the landmarks, denoted as $f(\mathbb{x})$, can be treated as mappings from the target location. We are interested in understanding the probability that the measurements $f(\mathbb{x})$ are sufficiently distinct from the measurement $f(\mathbb{x}_0)$ at the given location, which we term localizability. Expressions of localizability probability are derived for specific vision-inspired measurements, such as ranges to landmarks and snapshots of their locations. Our analysis reveals that the localizability probability approaches one when the landmark intensity tends to infinity, which means that error-free localization is achievable in this limiting regime.
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基于视觉的定位基础:利用随机几何进行可定位性分析的新方法
尽管基于视觉的定位在算法上取得了重大进展,但研究其性能的综合概率框架仍有待探索。本文的主要目的就是利用随机几何的思想来开发这样一个框架。由于传感器分辨率、先验信息的详细程度和计算资源的限制,我们可能无法区分视觉数据中外观相似的地标,如树木、灯柱和公交车站。虽然我们无法通过单个难以区分的地标准确确定目标的绝对位置,但如果目标能看到多个地标,而这些地标在地图上的几何位置又是独一无二的,那么我们就有可能获得大致的位置固定。我们将这些不可分辨地标的位置建模为$\mathbb{R}^2$上的泊松点过程(PPP)$\Phi$,并开发了一种新方法来分析这种情况下的可定位性。从目标位置$\mathbb{x}$出发,从可视区域内的地标获取测量值。这些测量值,包括与地标的距离和角度(表示为 $f(\mathbb{x})$),可被视为来自目标位置的映射。我们感兴趣的是了解主题测量值$f(\mathbb{x})$与给定位置的测量值$f(\mathbb{x}_0)$有足够区别的概率,我们称之为本地化概率。我们的分析表明,当地标强度趋于无穷大时,定位概率接近于 1,这意味着在这种极限状态下可以实现无误差定位。
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