从传感器读数中识别活动的关系学习方法

Javier Ortiz
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引用次数: 1

摘要

理解人类行为的能力是许多应用程序的必要组成部分。在其他任务中,这种理解包括自动生成和维护人类行为、目标和计划的模型。本文提出了一种从感官输入开始推断人们为完成日常生活活动而采取的行动的系统。我们的方法是基于使用关系学习来推断刚刚执行的操作的预测。我们学习了一个基于从传感器读数检测到的状态变化来识别已执行动作的模型。每个变化都是由一个已执行的操作产生的,而这些操作的序列形成了一个计划,以完成一个高级操作或实现一个目标。使用关系学习工具Tilde,我们获得了将状态变化映射到用户执行的操作的分类器。我们使用环境模拟器进行了一些实验,模拟器的数据来自真实的人类行为。结果表明,即使在噪声存在的情况下,也能获得较好的精度。
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A relational learning approach to activity recognition from sensor readings
The ability of understanding humanpsilas behavior is a required component for many applications. This understanding includes, among other tasks, automatically generating and maintaining models of human actions, goals and plans. This paper presents a system to infer the actions that people perform in order to accomplish activities of daily living starting from sensory inputs. Our approach is based on using relational learning to infer predictions about which action has just been executed. We learn a model for recognizing executed actions based on the state changes detected from sensor readings. Each change has been produced by a performed action, while a sequence of these actions forms a plan to accomplish a high-level action or to achieve a goal. Using a relational learning tool, Tilde, we obtain classifiers to map changes in the states to actions performed by a user. We have performed some experiments using an environment simulator feeded by data gathered from real human behaviour. The results show that we can obtain a good accuracy even in presence of noise.
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