自适应多传感器系统:自我完善和自我修复技术的概念

Martin Jänicke, B. Sick, P. Lukowicz, D. Bannach
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引用次数: 10

摘要

活动识别(AR)系统越来越多地进入我们的日常生活,从监测日常活动到支持医疗保健。然而,这样的系统往往使用狭义定义的规范,要求用户进行与应用程序相关的设置和配置。长期目标是自主系统,能够在没有(或最少)用户交互的情况下工作。与该愿景密切相关的是在运行时自主添加进一步输入源(例如,传感器)的能力,从而增加输入空间的维度。我们的方法旨在系统地研究创建自适应分类系统所需的方法。这包括基于有机计算(OC)原则的体系结构,以及用于比较概率模型和评估不同维度分类器的程序的度量的开发。使用这样的评估技术,系统应该能够在运行时以自组织的方式调整它们的系统模型。除了自我改进(增加一个新的传感器),我们还解决了自我修复的问题(更换一个脱落的传感器)。
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Self-Adapting Multi-sensor Systems: A Concept for Self-Improvement and Self-Healing Techniques
Activity Recognition (AR) Systems more and more find their way into our daily lives, from monitoring daily activities to support in medical care. However, such systems tend to be used with narrowly defined specifications, demanding for application-dependent setup and configuration by their users. A long term goal are autonomous systems, being able to work with no (or minimal) user interaction. Closely related to that vision is the ability of autonomously adding further input sources (e.g., sensors) at run-time, leading to an increased dimensionality of the input-space. Our approach aims at systematically investigating methods necessary for the creation of self-adapting classification systems. This includes an architecture, based on Organic Computing (OC) principles, as well as the development of measures for comparing probabilistic models and procedures for evaluating classifiers of different dimensionality. With such evaluation techniques, systems should be able to adapt their system model at run-time in a self-organized manner. Besides self-improvement (adding a new sensor) we also address the problem of self-healing (replacing a sensor that dropped out).
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