Department of Computer and Control Engineering, Faculty of Electrical and Computer Engineering, Rzeszów University of Technology, W. Pola 2, 35-959 Rzeszów, Poland.
Sensors (Basel). 2019 Mar 3;19(5):1078. doi: 10.3390/s19051078.
The paper presents a method for recognizing sequences of static letters of the Polish finger alphabet using the point cloud descriptors: viewpoint feature histogram, eigenvalues-based descriptors, ensemble of shape functions, and global radius-based surface descriptor. Each sequence is understood as quick highly coarticulated motions, and the classification is performed by networks of hidden Markov models trained by transitions between postures corresponding to particular letters. Three kinds of the left-to-right Markov models of the transitions, two networks of the transition models-independent and dependent on a dictionary-as well as various combinations of point cloud descriptors are examined on a publicly available dataset of 4200 executions (registered as depth map sequences) prepared by the authors. The hand shape representation proposed in our method can also be applied for recognition of hand postures in single frames. We confirmed this using a known, challenging American finger alphabet dataset with about 60,000 depth images.
视点特征直方图、基于特征值的描述符、形状函数集和基于全局半径的曲面描述符。每个序列都被理解为快速高度协同的运动,分类是通过对应于特定字母的姿势之间的转换的隐马尔可夫模型网络进行的。在作者准备的一个公开可用的 4200 次执行(注册为深度图序列)数据集上,检查了三种从左到右的转移马尔可夫模型、两个不依赖字典和依赖字典的转移模型网络以及各种点云描述符的组合。我们方法中提出的手形表示也可以应用于单帧中手姿势的识别。我们使用一个已知的、具有约 60000 个深度图像的具有挑战性的美国手指字母数据集证实了这一点。