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Finger Spelling Recognition Using Kernel Descriptors and Depth Images

机译:手指拼写识别使用内核描述符和深度图像

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Deaf people use systems of communication based on sign language and finger spelling. Finger spelling is a system where each letter of the alphabet is represented by a unique and discrete movement of the hand. RGB and depth images can be used to characterize hand shapes corresponding to letters of the alphabet. There exists an advantage of depth sensors, as Kinect, over color cameras for finger spelling recognition: depth images provide 3D information of the hand. In this paper, we propose a model for finger spelling recognition based on depth information using kernel descriptors, consisting of four stages. The performance of this approach is evaluated on a dataset of real images of the American Sign Language finger spelling. Different experiments were performed using a combination of both descriptors over depth information. Our approach obtains 92.92% of mean accuracy with 50% of samples for training, outperforming other state-of-the-art methods.
机译:聋人使用基于手语和手指拼写的通信系统。手指拼写是一个系统,其中字母表的每个字母由手的独特和离散运动表示。 RGB和深度图像可用于表征与字母表字母对应的手形状。深度传感器的优点是作为Kinect,在用于手指拼写识别的彩色摄像机上:深度图像提供手的3D信息。在本文中,我们提出了一种基于使用内核描述符的深度信息的手指拼写识别模型,由四个阶段组成。这种方法的性能是在美国手语手指拼写的真实图像的数据集上进行评估。使用两个描述符的组合在深度信息上进行不同的实验。我们的方法从50%的样品获得92.92%的平均准确性,用于训练,优于其他最先进的方法。

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