首页> 外文期刊>Sensors >Towards Real-Time and Rotation-Invariant American Sign Language Alphabet Recognition Using a Range Camera
【24h】

Towards Real-Time and Rotation-Invariant American Sign Language Alphabet Recognition Using a Range Camera

机译:使用范围相机实现实时和旋转不变的美国手语字母识别

获取原文
           

摘要

The automatic interpretation of human gestures can be used for a natural interaction with computers while getting rid of mechanical devices such as keyboards and mice. In order to achieve this objective, the recognition of hand postures has been studied for many years. However, most of the literature in this area has considered 2D images which cannot provide a full description of the hand gestures. In addition, a rotation-invariant identification remains an unsolved problem, even with the use of 2D images. The objective of the current study was to design a rotation-invariant recognition process while using a 3D signature for classifying hand postures. A heuristic and voxel-based signature has been designed and implemented. The tracking of the hand motion is achieved with the Kalman filter. A unique training image per posture is used in the supervised classification. The designed recognition process, the tracking procedure and the segmentation algorithm have been successfully evaluated. This study has demonstrated the efficiency of the proposed rotation invariant 3D hand posture signature which leads to 93.88% recognition rate after testing 14,732 samples of 12 postures taken from the alphabet of the American Sign Language.
机译:手势的自动解释可用于与计算机进行自然交互,而无需使用键盘和鼠标等机械设备。为了实现该目的,已经对姿势识别进行了多年研究。然而,该领域中的大多数文献已经考虑了不能提供手势的完整描述的2D图像。另外,即使使用2D图像,旋转不变识别仍然是未解决的问题。当前研究的目的是设计旋转不变的识别过程,同时使用3D签名对手势进行分类。已经设计和实现了一种基于启发式和基于体素的签名。使用卡尔曼滤波器可实现对手部动作的跟踪。在监督分类中使用每个姿势的唯一训练图像。设计的识别过程,跟踪程序和分割算法已被成功评估。这项研究证明了所提出的旋转不变3D手姿势签名的效率,在测试了从美国手语字母中提取的12种姿势的14,732个样本后,识别率达到93.88%。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号