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MR中融合语义特征传播模型的前景对象感知定位算法

Journal of Shanghai University(Natural Science Edition)(2023)

上海大学

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Abstract
移动主体获得准确的定位信息是构建稳定的混合现实(mixed reality,MR)系统的关键,然而MR中的前景对象对传统定位算法的精度影响较大.现阶段基于深度学习的定位算法可以通过识别前景对象来提升精度,但深度学习模型耗时过高,导致算法实时性下降.针对该问题,提出了一种MR中融合语义特征传播模型的前景对象感知定位算法.该算法依托语义分割网络与一种快速旋转的二进制独立稳定描述子特征(oriented fast and rotated binary robust independent elementary feature,ORB)提取算法构建了语义特征传播模型,实现高速语义特征提取;融合该模型和几何特征检测方法实现算法中的前景对象感知层,并依赖该感知层剔除MR中前景对象的特征点,构建了背景特征点集,实现高精度、高实时性的定位.实验结果表明:在慕尼黑工业大学(Technical University of Munich,TUM)公共数据集的高动态前景对象场景中,相比动态语义视觉同步定位与建图(dynamic semantic visual simultaneous localization and mapping,DS-SLAM)算法,该算法相对位姿误差降低了 60.5%,定位实时性提升了 39.5%,可见该算法在MR中具有较高的应用价值.
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  • Pretraining has recently greatly promoted the development of natural language processing (NLP)
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