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Real time finger tracking and contour detection for gesture recognition using OpenCV

机译:使用OpenCV的实时手指跟踪和手势识别的轮廓检测

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Gestures are important for communicating information among the human. Nowadays new technologies of Human Computer Interaction (HCI) are being developed to deliver user's command to the robots. Users can interact with machines through hand, head, facial expressions, voice and touch. The objective of this paper is to use one of the important modes of interaction i.e. hand gestures to control the robot or for offices and household applications. Hand gesture detection algorithms are based on various machine learning methods such as neural networks, support vector machine, and Adaptive Boosting (AdaBoost). Among these methods, AdaBoost based hand-pose detectors are trained with a reduced Haar-like feature set to make the detector robust. The corresponding context-free grammar based proposed method gives effective real time performance with great accuracy and robustness for more than four hand gestures. Rectangles are creating some problem due to that we have also implement the alternate representation method for same gestures i.e. fingertip detection using convex hull algorithm.
机译:手势对于沟通人类之间的信息很重要。如今正在开发人机交互(HCI)的新技术来向机器人提供用户的命令。用户可以通过手,头部,面部表情,语音和触摸与机器交互。本文的目的是使用其中一个重要的相互作用方式之一即,手势控制机器人或办公室和家庭应用。手势检测算法基于各种机器学习方法,如神经网络,支持向量机和自适应升压(Adaboost)。在这些方法中,基于AdaBoost的手姿势检测器训练,其具有减少的哈拉的特征,以使检测器稳健。相应的无内容语法基于语法的提出方法为多于四个手势的特点和鲁棒性提供了有效的实时性能。矩形正在创建一些问题,因为我们还实现了用于使用凸船体算法的相同手势的备用表示方法。

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