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ORB-SLAM-CNN: Lessons in Adding Semantic Map Construction t1o Feature-Based SLAM

机译:ORB-SLAM-CNN:添加语义地图建设的课程T1O功能基于SLAM

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Recent work has integrated semantics into the 3D scene models produced by visual SLAM systems. Though these systems operate close to real time, there is lacking a study of the ways to achieve realtime performance by trading off between semantic model accuracy and computational requirements. ORB-SLAM2 provides good scene accuracy and real-time processing while not requiring CPUs [1]. Following a 'single view' approach of overlaying a dense semantic map over the sparse SLAM scene model, we explore a method for automatically timing the parameters of the system such that it operates in real time while maximizing prediction accuracy and map density.
机译:最近的工作在Visual Slam Systems生产的3D场景模型中具有集成的语义。虽然这些系统靠近实时运行,但缺乏通过在语义模型准确度和计算要求之间交易进行实时性能来实现实时性能的研究。 ORB-SLAM2提供了良好的场景精度和实时处理,同时不需要CPU [1]。在覆盖稀疏的SLAM场景模型上覆盖密集语义地图的“单视图”方法之后,我们探索了一个自动定时系统参数的方法,使其实时运行,同时最大化预测精度和地图密度。

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