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An Improved Faster R-CNN Algorithm for Gesture Recognition in Human-Robot Interaction

机译:人机交互中一种改进的快速R-CNN手势识别算法

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Gesture recognition technology has been recognized as a communication method between human and robot systems. To our best knowledge, however, no study has been reported in open literature regarding the faster region-based convolutional neural network (Faster R-CNN) algorithm to improve the accuracy of gesture recognition. This paper proposes an improved Faster R-CNN algorithm that combines three key insights: (1) one can use Gaussian filter as image pre-processing method in order to remove image noise, (2) VGG16, compared with the residual network, is used as the feature extraction network of the improved Faster R-CNN algorithm to improve the gesture recognition accuracy, (3) five-fold cross-validation is used to evaluate the generalization performance of the algorithm. The experimental results show that an improved Faster R-CNN algorithm significantly improves mean average precision to 99.89%, which provides a better method for gesture recognition in human-robot interaction applications.
机译:手势识别技术被认为是人与机器人系统之间的通信方法。然而,为了我们的最佳知识,在开放文献中没有关于基于地区的卷积神经网络(更快的R-CNN)算法,以提高手势识别的准确性。本文提出了一种改进的R-CNN算法,结合了三个关键见解:(1)可以使用高斯滤波器作为图像预处理方法,以便除去图像噪声,(2)VGG16与剩余网络相比,使用作为提高更快的R-CNN算法的特征提取网络,以提高手势识别精度,(3)五倍交叉验证用于评估算法的泛化性能。实验结果表明,提高的R-CNN算法显着提高了平均平均精度至99.89%,为人体机器人交互应用提供了更好的手势识别方法。

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