基于图像数据流的机器人环境聚类

Priyanka C. Nair, G. Radhakrishnan, Deepa Gupta, T. Sudarshan
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引用次数: 4

摘要

移动机器人被用于各种应用,如航天飞机、智能家庭安全、军事应用或其他面向服务的应用,这些应用的人为干预是有限的。机器人必须通过分析数据来了解环境,以便在给定的环境中采取适当的行动。大多数从机器人上的传感器收集的数据是巨大的和连续的,使得不可能将所有数据存储在主存储器中,因此只允许一次扫描数据。传统的聚类算法(如k-means)需要对数据进行多次扫描,因此无法在这种环境下使用。本文对Stream k++的实现进行了实验研究。Stream k++是一种数据流聚类算法,可以在各种条件下在内存限制下有效地聚类这些时间序列机器人图像数据。从进行的各种实验中获得了令人满意的结果。
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Clustering of robotic environment using image data stream
Mobile robots are being used in various applications like space shuttles, intelligent home security, military applications or other service oriented applications where human intervention is limited. A robot has to understand its environment by analyzing the data to take the appropriate actions in the given environment. Mostly the data collected from the sensors on the robots are huge and continuous, making it impossible to store the entire data in main memory and hence allowing only single scan of data. Traditional clustering algorithms like k-means cannot be used in such environment as they require multiple scan of data. This paper presents an experimental study on the implementation of Stream KM++, a data stream clustering algorithm that effectively cluster these time series robotic image data within the memory restrictions under various conditions. Promising results are obtained from the various experiments carried out.
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