基于退化程度的传感器自适应补偿策略

IF 5.4
Yanbin Li , Wei Zhang , Zhiguo Zhang , Xiaogang Shi , Ziruo Li , Mingming Zhang , Wenzheng Chi
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引用次数: 0

摘要

同时定位与制图(SLAM)被广泛应用于解决机器人等无人设备的定位问题。然而,在退化环境中,由于缺乏约束特征,SLAM的精度大大降低。在本文中,我们提出了一种基于深度学习的传感器自适应补偿策略。首先,我们创建一个专门用于训练退化检测模型的数据集,该数据集包含具有不同分布特征的粒子群坐标数据,并通过监督学习赋予模型退化检测能力。其次,针对实时退化检测任务,设计了计算时间短、精度好的轻量级网络模型。最后,设计了基于退化程度的传感器自适应补偿策略,SLAM能够根据模型给出的退化程度对传感器信息赋予不同的权重,以调整不同传感器在位姿优化过程中的贡献。通过仿真实验和实际实验证明,改进后的SLAM在退化环境下的鲁棒性显著增强,定位和映射精度得到提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An adaptive compensation strategy for sensors based on the degree of degradation
Simultaneous Localization and Mapping (SLAM) is widely used to solve the localization problem of unmanned devices such as robots. However, in degraded environments, the accuracy of SLAM is greatly reduced due to the lack of constrained features. In this article, we propose a deep learning-based adaptive compensation strategy for sensors. First, we create a dataset dedicated to training a degradation detection model, which contains coordinate data of particle swarms with different distributional features, and endow the model with degradation detection capability through supervised learning. Second, we design a lightweight network model with short computation time and good accuracy for real-time degradation detection tasks. Finally, an adaptive compensation strategy for sensors based on the degree of degradation is designed, where the SLAM is able to assign different weights to the sensor information according to the degree of degradation given by the model, to adjust the contribution of different sensors in the pose optimization process. We demonstrate through simulation experiments and real experiments that the robustness of the improved SLAM in degraded environments is significantly enhanced, and the accuracy of localization and mapping are improved.
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CiteScore
1.80
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