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A vision based dynamic gesture recognition of Indian Sign Language on Kinect based depth images

机译:基于Kinect的深度图像上基于视觉的印度手势语动态手势识别

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Indian Sign Language (ISL) is a visual-spatial language which provides linguistic information using hands, arms, facial expressions, and head/body postures. Our proposed work aims at recognizing 3D dynamic signs corresponding to ISL words. With the advent of 3D sensors like Microsoft Kinect Cameras, 3D geometric processing of images has received much attention in recent researches. We have captured 3D dynamic gestures of ISL words using Kinect camera and has proposed a novel method for feature extraction of dynamic gestures of ISL words. While languages like the American sign language(ASL) are of huge popularity in the field of research and development, Indian Sign Language on the other hand has been standardized recently and hence its (ISLs) recognition is less explored. The method extracts features from the signs and convert it to the intended textual form. The proposed method integrates both local as well as global information of the dynamic sign. A new trajectory based feature extraction method using the concept of Axis of Least Inertia (ALI) is proposed for global feature extraction. An eigen distance based method using the seven 3D key points- (five corresponding to each finger tips, one corresponding to centre of the palm and another corresponding to lower part of palm), extracted using Kinect is proposed for local feature extraction. Integrating 3D local feature has improved the performance of the system as shown in the result. Apart from serving as an aid to the disabled people, other applications of the system also include serving as a sign language tutor, interpreter and also be of use in electronic systems that take gesture input from the users.
机译:印度手语(ISL)是一种视觉空间语言,它使用手,手臂,面部表情和头/身体姿势来提供语言信息。我们提出的工作旨在识别与ISL单词相对应的3D动态符号。随着诸如Microsoft Kinect相机之类的3D传感器的出现,图像的3D几何处理在最近的研究中受到了很多关注。我们已经使用Kinect相机捕获了ISL单词的3D动态手势,并提出了一种新颖的ISL单词动态手势特征提取方法。尽管诸如美国手语(ASL)之类的语言在研究和开发领域中非常受欢迎,但另一方面,印度手语却最近得到了标准化,因此,对它的(ISL)识别的探索也很少。该方法从标志中提取特征并将其转换为预期的文本形式。所提出的方法集成了动态符号的局部和全局信息。提出了一种基于最小惯性轴(ALI)概念的基于轨迹的特征提取方法。提出了一种基于特征距离的方法,该方法使用Kinect提取的七个3D关键点(五个对应于每个指尖,一个对应于手掌中心,另一个对应于手掌下部),用于局部特征提取。结果显示,集成3D局部特征可以提高系统性能。除了作为对残疾人的帮助之外,该系统的其他应用还包括充当手语导师,口译员,并且还可以用于从用户那里获取手势输入的电子系统中。

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