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Hand Gesture-Based Character Recognition Using OpenCV and Deep Learning

机译:基于OpenCV和深度学习的手势字符识别

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Fast, accurate, and user-friendly human-computer interaction (HCI) requires both processing and intelligence. Understanding signs, and symbols is already possible by computers but recognizing symbols drawn live by a human in front of a camera is still a new concept. Many attempts have been made to achieve this already by using different sensors like Time of Flight (ToF) camera, Kinect sensor, etc., by using special metric systems or by special algorithms. Our research proposes doing such work using normal cameras that almost every computer has already. In this work, we tried to approach the problem from two directions. We left the detection, tracking and drawing tasks on mathematics-based algorithms like Accumulated Weight, CSRT (The Channel and Spatial Reliability) Tracker and OpenCV (Open Computer Vision) library. The recognition relies on deep learning. Our model can classify different characters of English alphabet and numerals so that when a user draws that, it can predict that. Our deep learning model is 98.56% accurate in classifying symbols which is more accurate than previous methods while not requiring any special sensors.
机译:快速、准确、用户友好的人机交互(HCI)需要处理和智能。计算机已经可以理解符号和符号,但识别人类在摄像机前实时绘制的符号仍然是一个新概念。通过使用不同的传感器,如飞行时间(ToF)摄像机、Kinect传感器等,通过使用特殊的度量系统或特殊算法,已经做出了许多尝试来实现这一点。我们的研究建议使用几乎所有计算机都拥有的普通摄像头来完成这项工作。在这项工作中,我们试图从两个方向来解决这个问题。我们将检测、跟踪和绘图任务留给了基于数学的算法,比如累积权重、CSRT(通道和空间可靠性)跟踪器和OpenCV(开放式计算机视觉)库。这种认知依赖于深度学习。我们的模型可以对英语字母和数字的不同字符进行分类,这样当用户绘制这些字符时,它就可以预测这些字符。我们的深度学习模型对符号的分类准确率为98.56%,比以前的方法更准确,同时不需要任何特殊的传感器。

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