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Deep learning based hand gesture recognition in complex scenes

机译:在复杂场景中基于深度学习的手势识别

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Recently, region-based convolutional neural networks(R-CNNs) have achieved significant success in the field of object detection, but their accuracy is not too high for small objects and similar objects, such as the gestures. To solve this problem, we present an online hard example testing(OHET) technology to evaluate the confidence of the R-CNNs' outputs, and regard those outputs with low confidence as hard examples. In this paper, we proposed a cascaded networks to recognize the gestures. Firstly, we use the region-based fully convolutional neural network(R-FCN), which is capable of the detection for small object, to detect the gestures, and then use the OHET to select the hard examples. To enhance the accuracy of the gesture recognition, we re-classify the hard examples through VGG-19 classification network to obtain the final output of the gesture recognition system. Through the contrast experiments with other methods, we can see that the cascaded networks combined with the OHET reached to the state-of-the-art results of 99.3% mAP on small and similar gestures in complex scenes.
机译:近年来,基于区域的卷积神经网络(R-CNN)在物体检测领域取得了巨大的成功,但对于小物体和类似物体(例如手势)而言,它们的准确性并不是很高。为解决此问题,我们提出了一种在线硬示例测试(OHET)技术,以评估R-CNN输出的置信度,并将这些置信度低的输出视为硬示例。在本文中,我们提出了一种级联网络来识别手势。首先,我们使用能够检测小物体的基于区域的全卷积神经网络(R-FCN)来检测手势,然后使用OHET来选择困难的例子。为了提高手势识别的准确性,我们通过VGG-19分类网络对硬示例进行了重新分类,以获取手势识别系统的最终输出。通过与其他方法的对比实验,我们可以看到,与OHET相结合的级联网络在复杂场景中的小而相似的手势上达到了99.3%mAP的最新结果。

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