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Evolutionary Fuzzy Adaptive Motion Models for User Tracking in Augmented Reality Applications

机译:增强现实应用中用户跟踪的进化模糊自适应运动模型

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In Augmented Reality (AR) applications, tracking the movements of user is the one of the most crucial issues. Because of the unpredictable structure of human movement, tracking the user with classical robot tracking methods can cause inaccurate result. In this study, motion different models for increasing the precision of human tracking using GPS-INS receiver was developed. First, a fuzzy motion model was developed and this model was improved using an evolutionary algorithm. With these algorithms allowing to choose between different motion models, transition among the motion models was achieved in real time and precision was increased for human tracking.
机译:在增强现实(AR)应用中,跟踪用户的动作是最重要的问题之一。由于人类运动的不可预测的结构,跟踪用户具有古典机器人跟踪方法可能导致不准确的结果。在本研究中,开发了使用GPS-INS接收器提高人力跟踪精度的不同模型。首先,开发了模糊运动模型,使用进化算法改进了该模型。利用这些算法允许在不同运动模型之间进行选择,可以实时实现运动模型之间的过渡,并且对人类跟踪增加了精度。

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