部分依赖GNSS的多传感器融合方法综述

Rajesh Nagula, Kushagra Srivastava, K. Surender
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摘要

传感器融合处理多个传感器数据的合并,以提供相对于其环境的系统(通常是机器人)的姿态、位置和方向的稳定可靠的估计。为了应对这一挑战,需要采用一种良好的策略来提取传感器数据并将传感器的误差最小化。近年来,许多算法被用来改进和解决这一问题。尽管这一领域的工作有了巨大的扩展,但各种方法的精确汇编和比较仍然是一个未探索的主题。本文介绍了当前最先进的多传感器融合方法,重点关注部分依赖于全球导航卫星系统(GNSS)的技术。我们研究了使用各种体系结构的工作,并将它们分为两大类:松耦合和紧耦合。基于最小化误差所使用的优化,进一步区分了这些方法。
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An Overview of Multi-Sensor Fusion Methods with Partial Reliance on GNSS
Sensor Fusion deals with the amalgamation of multiple sensor data to provide a steady and reliable estimate of the pose: position and orientation of the system, generally a robot, relative to its environment. A good strategy for extracting sensor data and minimizing errors from the sensor needs to be adopted to address this challenge. Many algorithms have been employed to improve and solve this problem in recent times. Despite the tremendous expansion of work in this domain, a precise compilation and comparison of various methodologies have remained an unexplored subject. This paper presents the current state-of-the-art multi-sensor fusion methods, with a significant focus on partially Global Navigation Satellite System (GNSS) dependent techniques. We have investigated works with various architecture and classified them into two major categories: Loosely-coupled and Tightly-coupled. These methods are further differentiated based on the optimization used for minimizing error.
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