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Time-of-flight based multi-sensor fusion strategies for hand gesture recognition

机译:用于手势识别的飞行时间基多传感器融合策略

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Building upon prior results, we present an alternative approach to efficiently classifying a complex set of 3D hand poses obtained from modern Time-Of-Flight-Sensors (TOF). We demonstrate it is possible to achieve satisfactory results in spite of low resolution and high noise (inflicted by the sensors) and a demanding outdoor environment. We set up a large database of pointclouds in order to train multilayer perceptrons as well as support vector machines to classify the various hand poses. Our goal is to fuse data from multiple TOF sensors, which observe the poses from multiple angles. The presented contribution illustrates that real-time capability can be maintained with such a setup as the used 3D descriptors, the fusion strategy as well as the online confidence measures are computationally efficient.
机译:在现有结果时,我们提出了一种替代方法,可以有效地对从现代飞行时间传感器(TOF)获得的复杂的3D手姿势进行分类。 我们证明尽管有低分辨率和高噪声(由传感器造成的高噪声(由传感器造成)和苛刻的户外环境,因此可以实现令人满意的结果。 我们设置了一个大量的PointClouds,以便培训多层的感知者以及支持向量机来分类各种手姿势。 我们的目标是融合来自多个TOF传感器的数据,该传感器观察来自多个角度的姿势。 所呈现的贡献说明了可以用这种设置保持实时能力作为所使用的3D描述符,融合策略以及在线置信度量是计算效率的。

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