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Hand detection in American Sign Language depth data using domain-driven random forest regression

机译:使用域驱动的随机森林回归在美国手语深度数据中进行手检测

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In Automatic Sign Language Recognition (ASLR), robust hand tracking and detection is key to good recognition accuracy. We introduce a new dataset of depth data from continuously signed American Sign Language (ASL) sentences. We present analysis showing numerous errors of the Microsoft Kinect Skeleton Tracker (MKST) in cases where hands are close to the body, close to each other, or when the arms cross. We also propose a method based on domain-driven random forest regression, which predicts real world 3D hand locations using features generated from depth images. We show that our hand detector (DDRFR) has >20% improvement over the MKST within a margin of error of 5 cm from the ground truth.
机译:在自动手语识别(ASLR)中,可靠的手部跟踪和检测是获得良好识别精度的关键。我们引入了来自连续签名的美国手语(ASL)句子的深度数据的新数据集。我们提出的分析表明,在手靠近身体,彼此靠近或手臂交叉的情况下,Microsoft Kinect骨架跟踪器(MKST)会出现许多错误。我们还提出了一种基于域驱动的随机森林回归的方法,该方法使用从深度图像生成的特征来预测现实世界中3D手的位置。我们表明,我们的手持探测器(DDRFR)在距离地面真相5厘米的误差范围内,与MKST相比,提高了20%以上。

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