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首页> 外文期刊>International Journal of Advanced Robotic Systems >A Novel Robust Scene Change Detection Algorithm for Autonomous Robots Using Mixtures of Gaussians Regular Paper
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A Novel Robust Scene Change Detection Algorithm for Autonomous Robots Using Mixtures of Gaussians Regular Paper

机译:高斯普通纸混合物的自主机器人的一种新颖的鲁棒场景变化检测算法

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摘要

Interest in change detection techniques has considerably increased during recent years in the field of autonomous robotics. This is partly because changes in a robot's working environment are useful for several robotic skills (e. g., spatial cognition, modelling or navigation) and applications (e. g., surveillance or guidance robots). Changes are usually detected by comparing current data provided by the robot's sensors with a previously known map or model of the environment. When the data consists of a large point cloud, dealing with it is a computationally expensive task, mainly due to the amount of points and the redundancy. Using Gaussian Mixture Models (GMM) instead of raw point clouds leads to a more compact feature space that can be used to efficiently process the input data. This allows us to successfully segment the set of 3D points acquired by the sensor and reduce the computational load of the change detection algorithm. However, the segmentation of the environment as a Mixture of Gaussians has some problems that need to be properly addressed. In this paper, a novel change detection algorithm is described in order to improve the robustness and computational cost of previous approaches. The proposal is based on the classic Expectation Maximization (EM) algorithm, for which different selection criteria are evaluated. As demonstrated in the experimental results section, the proposed change detection algorithm achieves the detection of changes in the robot's working environment faster and more accurately than similar approaches.
机译:在自治机器人领域的近年来,改变检测技术的兴趣大大增加。部分原因是因为机器人的工作环境中的变化对于多种机器人技能有用(例如,空间认知,建模或导航)和应用(例如,监视或指导机器人)。通常通过比较机器人传感器提供的当前数据具有先前已知的地图或环境的模型来检测更改。当数据由一个大点云组成时,处理它是一种计算昂贵的任务,主要是由于点数和冗余量。使用高斯混合模型(GMM)而不是原始点云导致更紧凑的特征空间,可用于有效地处理输入数据。这使我们能够成功分割由传感器获取的一组3D点,并降低改变检测算法的计算负荷。然而,作为高斯的混合物的环境分割存在一些需要正确解决的问题。本文描述了一种新颖的改变检测算法,以提高先前方法的鲁棒性和计算成本。该提案基于经典期望最大化(EM)算法,用于评估不同的选择标准。如实验结果部分所示,所提出的变化检测算法达到了比类似方法更快更准确地检测机器人的工作环境的变化。

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