首页> 外文期刊>Journal of ambient intelligence and smart environments >A modular classifier concept for activity recognition on mobile phones
【24h】

A modular classifier concept for activity recognition on mobile phones

机译:用于手机活动识别的模块化分类器概念

获取原文
获取原文并翻译 | 示例
           

摘要

On October 26, 2011, Martin Berchtold defended his Ph.D. dissertation titled: "A Modular Classifier Concept for Activity Recognition on Mobile Phones". Supervisors where Lars Wolf, TU Braunschweig and Michael Beigl, TECO, KIT. Martin Berchtold finished his diploma in 2007 with the diploma thesis "Quality Management of Contexts - Reliability with Fuzzy Logic". Afterwards he attended the TECO research lab of the University of Karlsuhe as research assistant. His early work concerned the bulk reading of RFID labels at item level tagging in retail stores (German research project "LoCostix") and the development of an infrastructure-less navigation system for firefighters (German research project "Land-marke"). In 2009 Martin Berchtold changed to the research group of Prof. Beigl at the University of Braunschweig where he worked on the topic of activity recognition on smart phones in the project "Loc-Com" ("IT-Ecosystems" joint project of the state of Niedersachsen). In 2010 he joined Prof. Beigl when he accepted a call to the KIT, but partly he continued his work on "LocCom". His main research focus was on reliability measures, classifiers and machine learning for activity recognition with accelerometer data which is also the topic of his PhD thesis.
机译:2011年10月26日,马丁·贝希特(Martin Berchtold)为自己的博士学位辩护。题为“用于移动电话的活动识别的模块化分类器概念”的论文。主管是Lars Wolf,TU不伦瑞克工业大学和Michael Beigl,TECO,KIT。马丁·贝希特(Martin Berchtold)于2007年以“环境的质量管理-模糊逻辑的可靠性”为毕业论文。之后,他作为研究助理参加了卡尔苏厄大学的TECO研究实验室。他的早期工作涉及零售商店中物品级别标签的RFID标签的批量读取(德国研究项目“ LoCostix”)和消防员的无基础设施导航系统的开发(德国研究项目“ Land-marke”)。 2009年,马丁·贝希特(Martin Berchtold)转到不伦瑞克大学(University of Braunschweig)的贝格(Beigl)教授的研究小组,在那里他从事了“ Loc-Com”(“ IT-Ecosystems”州立项目)项目中的智能手机活动识别这一主题。 Niedersachsen)。 2010年,他接受Beigl教授的邀请加入了Beigl教授,但部分他继续从事“ LocCom”的研究。他的主要研究重点是通过加速度计数据进行活动识别的可靠性度量,分类器和机器学习,这也是他的博士学位论文的主题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号