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KYDON, a self-organized autonomous net: learning model and failure recovery

机译:自组织的自主网络KYDON:学习模型和故障恢复

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In this paper, a learning model and a failure recovery approach of an autonomous vision system multi-layer architecture, called KYDON, are presented. The KYDON architecture consists of "k" layers array processors. The lowest layers compose the KYDON's low level processing group, and the rest compose the higher level processing groups. The interconnectivity of the processors in each array is based on a full hexagonal mesh structure. The lowest layer array processors captures images from the environment by employing a 2-D photoarray. The top most layer deals with the image interpretation and understanding. The intermediate layers perform learning and pattern recognition processes to bridge the image information flow from the bottom most layer to the top most one. KYDON uses graph models to represent and process the knowledge, extracted from the image. An important feature of KYDON is that it does not need any host computer or control processor to handle I/O and other miscellaneous tasks. A novel learning model has been developed for the KYDON's distributed knowledge base.
机译:本文提出了一种称为KYDON的自主视觉系统多层体系结构的学习模型和故障恢复方法。 KYDON体系结构由“ k”层阵列处理器组成。最低层组成KYDON的低级处理组,其余层组成较高级的处理组。每个阵列中处理器的互连性基于完整的六边形网格结构。最低层的阵列处理器通过使用2-D光电阵列来捕获环境中的图像。最顶层处理图像解释和理解。中间层执行学习和模式识别过程,以将图像信息流从最底层过渡到最顶层。 KYDON使用图形模型来表示和处理从图像中提取的知识。 KYDON的一个重要功能是它不需要任何主机或控制处理器来处理I / O和其他杂项任务。已经为KYDON的分布式知识库开发了一种新颖的学习模型。

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