基于语义地图的室内目标检测全局定位

Hongyi Dong, S. Xu, Wusheng Chou, Ran Jiao, Hao Yu
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引用次数: 1

摘要

由于室内环境的稀疏性和相似性,室内环境的全局定位一直是一个具有挑战性的问题。在机器人启动阶段,广泛应用的定位方法粒子滤波算法由于室内环境结构相似,可能会将粒子收敛到多个不同位置,导致定位失败。本文提出了一种将极大似然估计(MLE)和单镜头检测器(SSD)检测网络相结合的全局定位方法。首先,我们建立了一个由10类目标组成的室内数据集,并训练了一个SSD网络,该网络在目标检测领域具有最佳的速度和精度折衷。在训练好的模型基础上,将gmap (SLAM算法的一种变体)生成的二维网格地图与SSD网络计算的目标位置相结合,构建语义地图。最后,在考虑计算量的情况下,将MLE算法和空间金字塔方法应用于具有目标检测的全局定位过程。实验结果表明,该方法具有较好的鲁棒性,可以很容易地应用于其他定位系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Global Localization Using Object Detection in Indoor Environment Based on Semantic Map
Global Localization in indoor environment remains a challenging problem since the indoor environment is always sparse and similar. At the startup stage of the robot, the particle filter algorithm, a widely used localization method, may converge particles to several different positions because of the similar structures in indoor environment, resulting in localization failures. In this paper, a global localization method combining maximum likelihood estimation (MLE) and single shot detector (SSD) detection network is proposed. Firstly, we build an indoor dataset consisting of 10 classes of objects and train a SSD network, which has the best tradeoff between speed and accuracy in object detection field. Based on the well trained model, a semantic map combining 2D grid map generated by Gmapping (a variant of the SLAM algorithm) and object position calculated by SSD network is built. Finally, under the consideration of computation, MLE algorithm and space pyramid method are applied to the process of global localization with object detection. The proposed method is verified with robustness in the experiments and could be easily applied in other localization systems.
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