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Streaming Model Transformations By Complex Event Processing

机译:通过复杂事件处理流化模型转换

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Streaming model transformations represent a novel class of transformations dealing with models whose elements are continuously produced or modified by a background process. Executing streaming transformations requires efficient techniques to recognize the activated transformation rules on a potentially infinite input stream. Detecting a series of events triggered by compound structural changes is especially challenging for a high volume of rapid modifications, a characteristic of an emerging class of applications built on runtime models. In this paper, we propose a novel approach for streaming model transformations by combining incremental model query techniques with complex event processing (CEP) and reactive (event-driven) transformations. The event stream is automatically populated from elementary model changes by the incremental query engine, and the CEP engine is used to identify complex event combinations, which are used to trigger the execution of transformation rules. We demonstrate our approach in the context of automated gesture recognition over live models populated by Kinect sensor data.
机译:流模型转换代表了处理模型的新型转换,这些模型的元素是由后台过程连续产生或修改的。执行流转换需要有效的技术来识别可能无限的输入流上已激活的转换规则。对于大量快速修改(这是基于运行时模型构建的新兴应用程序的特征),检测由复合结构更改触发的一系列事件尤其具有挑战性。在本文中,我们通过将增量模型查询技术与复杂事件处理(CEP)和反应式(事件驱动)转换相结合,提出了一种用于流模型转换的新颖方法。增量查询引擎从基本模型更改中自动填充事件流,而CEP引擎用于标识复杂的事件组合,这些事件组合用于触发转换规则的执行。我们在由Kinect传感器数据填充的实时模型上的自动手势识别环境中展示了我们的方法。

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