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Experimental Evaluation of Computation Cost of FastSLAM Algorithm for Unmanned Ground Vehicles

机译:用于无人机的FastSLAM算法计算成本的实验评估

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Two decades ago, FastSLAM algorithm for mobile robots was introduced. Since then, dozens of research work focused on FastSLAM algorithm performance enhancement while keeping reduced computation cost. Since experimental evaluation of computation cost is dependent on the hardware capabilities of the platform, the present work introduces a quantitative theoretical method for predicting the computation cost of the FastSLAM algorithm. The method relies on the big (O) computation complexity which represents the worst case. The method was evaluated experimentally with different number of particles and different number of map features. The computation cost evaluation analysis was broken down into prediction, observation, data association and resampling computation cost evaluation. The proposed method was proven to be helpful in customization of FastSLAM parameters like number of particles and data association optimization for FastSLAM algorithm developers.
机译:二十年前,引入了用于移动机器人的FastSLAM算法。从那时起,数十项研究工作专注于FastSLAM算法性能的提高,同时保持降低的计算成本。由于计算成本的实验评估取决于平台的硬件功能,因此本工作介绍了一种定量理论方法来预测FastSLAM算法的计算成本。该方法依赖于代表最坏情况的大(O)计算复杂度。通过不同数量的粒子和不同数量的地图特征对方法进行了实验评估。计算成本评估分析可分为预测,观察,数据关联和重采样计算成本评估。事实证明,所提出的方法有助于FastSLAM参数的自定义,例如粒子数量和FastSLAM算法开发人员的数据关联优化。

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