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Hand Gesture Recognition with Convolution Neural Networks

机译:手势识别与卷积神经网络

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Hand gestures are the most common forms of communication and have great importance in our world. They can help in building safe and comfortable user interfaces for a multitude of applications. Various computer vision algorithms have employed color and depth camera for hand gesture recognition, but robust classification of gestures from different subjects is still challenging. I propose an algorithm for real-time hand gesture recognition using convolutional neural networks (CNNs). The proposed CNN achieves an average accuracy of 98.76% on the dataset comprising of 9 hand gestures and 500 images for each gesture.
机译:手势是最常见的沟通形式,在我们的世界中非常重视。他们可以帮助为多种应用构建安全和舒适的用户界面。各种计算机视觉算法已经采用了用于手势识别的颜色和深度相机,但来自不同科目的手势的强大分类仍然具有挑战性。我提出了一种使用卷积神经网络(CNN)的实时手势识别算法。所提出的CNN在数据集上实现了98.76%的平均精度,其包括9个手势和每个手势的500个图像。

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