An extension of GHMMs for environments with occlusions and automatic goal discovery for person trajectory prediction

Ignacio Pérez-Hurtado, J. Capitán, F. Caballero, L. Merino
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引用次数: 5

Abstract

Robots navigating in a social way should use some knowledge about common motion patterns of people in the environment. Moreover, it is known that people move intending to reach certain points of interest, and machine learning techniques have been widely used for acquiring this knowledge by observation. Learning algorithms such as Growing Hidden Markov Models (GHMMs) usually assume that points of interest are located at the end of human trajectories, but complete trajectories cannot always be observed by a mobile robot due to occlusions and people going out of sensor range. This paper extends GHMMs to deal with partial observed trajectories where people's goals are not known a priori. A novel technique based on hypothesis testing is also used to discover the points of interest (goals) in the environment. The approach is validated by predicting people's motion in three different datasets.
在有遮挡的环境中扩展ghmm,并在人轨迹预测中自动发现目标
以社交方式导航的机器人应该使用一些关于环境中人们的常见运动模式的知识。此外,众所周知,人们移动是为了达到某些兴趣点,机器学习技术已被广泛用于通过观察获取这些知识。生长隐马尔可夫模型(ghmm)等学习算法通常假设兴趣点位于人体轨迹的末端,但由于遮挡和人超出传感器范围,移动机器人并不总是能够观察到完整的轨迹。本文扩展了ghmm来处理部分观察到的轨迹,其中人们的目标是未知的先验。一种基于假设检验的新技术也被用于发现环境中的兴趣点(目标)。通过在三个不同的数据集中预测人们的运动,验证了该方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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