AR任务引导的学习对象和状态模型

W. Hoff, H. Zhang
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引用次数: 2

摘要

提出了一种自动学习对象和状态模型的方法,可用于增强现实任务引导系统的识别。我们假设任务涉及的对象的外观相当一致,但背景可能会有所不同。我们方法的新颖之处在于,系统可以从执行任务的专家的示例中自动构建。因此,该系统可以很容易地适应新的任务。该方法利用了对象的关键特征在多个查看实例中一致存在的事实;然而,来自背景或无关对象的特征并不始终存在。利用信息论,我们自动识别出最能区分物体状态的特征。在评估中,我们的原型在所有试验中都成功地识别了物体状态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Object and State Models for AR Task Guidance
We present a method for automatically learning object and state models, which can be used for recognition in an augmented reality task guidance system. We assume that the task involves objects whose appearance is fairly consistent, but the background may vary. The novelty of our approach is that the system can be automatically constructed from examples of experts performing the task. As a result, the system can be easily adapted to new tasks. The approach makes use of the fact that the key features of the object are consistently present in multiple viewing instances; whereas features from the background or irrelevant objects are not consistently present. Using information theory, we automatically identify the features that can best discriminate between object states. In evaluations, our prototype successfully recognized object states in all trials.
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