首页> 外国专利> Artificial Cognitive System having a proactive studying function using an Uncertainty Measure based on Class Probability Output Networks and proactive studying method for the same

Artificial Cognitive System having a proactive studying function using an Uncertainty Measure based on Class Probability Output Networks and proactive studying method for the same

机译:具有基于类概率输出网络的不确定性测度的具有主动学习功能的人工认知系统及其主动学习方法

摘要

The present invention provides an artificial cognitive system having a proactive learning function using uncertainty measurement based on class probability output networks, and a proactive learning method for the same. The proactive learning method comprises: a first step for allowing an artificial cognitive control unit to form a body of knowledge for learning materials inputted in a video or audio format through a camera and a microphone and learning materials inputted by wire and wireless through an interface unit; a second step for allowing the artificial cognitive control unit to predict the reliability of a corresponding learning material according to the formed body of knowledge, based on a predetermined proactive knowledge propagation model, and executing proactive learning of a proactive knowledge propagation model type depending on the predicted result, after the first step; and a third step for analyzing proactive learning performance during the first step and supplementing and modifying a calculation model included in the proactive knowledge propagation model depending on the analysis result. The present invention as described above can develop a calculation model having a brain cognitive function by complexly using an information engineering technique and a brain cognitive scientific technique, and can execute proactive learning using uncertainty measurement based on class probability output networks for intelligent robots, thereby allowing the intelligent robots to improve a cognitive function by themselves. [Reference numerals] (12) Video signal processing module; (5) Audio signal processing module; (6) Artificial cognitive control unit; (7) Cognitive learning module; (8) Memory unit; (9) Interface unit
机译:本发明提供一种具有基于类概率输出网络的使用不确定性测量的主动学习功能的人工认知系统,以及用于该人工认知系统的主动学习方法。主动学习方法包括:第一步,允许人工认知控制单元形成知识体系,以学习通过照相机和麦克风以视频或音频格式输入的材料以及通过接口单元以有线和无线方式输入的学习材料;第二步骤,允许人工认知控制单元基于预定的主动知识传播模型,根据形成的知识体来预测相应学习材料的可靠性,并根据主动知识传播模型类型执行主动学习。第一步后的预测结果;第三步骤,用于在第一步骤中分析主动学习性能,并根据分析结果对主动知识传播模型中包含的计算模型进行补充和修改。如上所述的本发明可以通过复杂地使用信息工程技术和脑认知科学技术来开发具有脑认知功能的计算模型,并且可以基于用于智能机器人的类概率输出网络使用不确定性测量来执行主动学习,从而允许智能机器人自行改善认知功能。 [附图标记](12)视频信号处理模块; (5)音频信号处理模块; (六)人工认知控制单位; (7)认知学习模块; (8)内存单元; (9)接口单元

著录项

  • 公开/公告号KR101456554B1

    专利类型

  • 公开/公告日2014-10-31

    原文格式PDF

  • 申请/专利权人

    申请/专利号KR20120095856

  • 发明设计人 이수영;김호경;길이만;

    申请日2012-08-30

  • 分类号G06N5;G06F17/10;

  • 国家 KR

  • 入库时间 2022-08-21 15:39:50

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