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Real-time cloud computing for web-based searching system of pattern recognition

机译:基于网络的实时云计算模式识别系统

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摘要

For cross-platform real-time systems, cloud computing technology is an innovative application of pattern recognition method. This study is the use of associative memory of the way to do the work of pattern recognition; this system is real-time client-server type network pattern recognition system. Remote user can operate through the browser to draw the shape or character of industrial components, and recognition system to the database through Internet search. Cloud storage server contains a database of pattern samples. In the training period, the user can specify any of the pattern to what in real-time. Patterns are recorded in the cloud server database. In the recall period, an innovative database matching methods have been proposed. This method can effectively solve the problem of RNN a false state of the database than on the technology to overcome the problem of capacity constraints RNN. In this new approach, CWBPR system partition database in the cloud server, a pattern record set, and then figure out they were separate sections for each value of W and θ. CWBPR system to deal with each of the last segment of the pattern recognition work. Pattern recognition technology for the network, the paper has two simulation experiments are clearly discussed. The first experiment identified a number of characters; the second experiment is the pattern recognition of industrial components. Finally, the paper also put forward innovative pattern recognition method to the traditional text input search method comparison.
机译:对于跨平台的实时系统,云计算技术是模式识别方法的创新应用。这项研究是利用联想记忆的方式来进行模式识别的工作;该系统是实时的客户端-服务器类型的网络模式识别系统。远程用户可以通过浏览器进行操作以绘制工业组件的形状或特征,并通过Internet搜索将识别系统识别到数据库中。云存储服务器包含模式样本数据库。在训练期间,用户可以实时指定任何模式。模式记录在云服务器数据库中。在召回期间,提出了一种创新的数据库匹配方法。这种方法可以有效地解决RNN数据库的错误状态问题,比之于克服RNN容量约束问题的技术。在这种新方法中,CWBPR系统将云服务器中的数据库分区为一个模式记录集,然后确定它们是W和θ每个值的独立部分。 CWBPR系统处理每个模式识别工作的最后一部分。对于网络模式识别技术,本文对两个仿真实验进行了明确讨论。第一个实验确定了许多字符;第二个实验是工业组件的模式识别。最后,论文还提出了创新的模式识别方法与传统的文本输入搜索方法进行比较。

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