手关键点检测与超分辨率

X. Jia, Jianqiang Feng, Baolin Liang
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引用次数: 0

摘要

手交互是目前计算机图像处理领域的一个重要研究内容。在手语识别、社交互动、虚拟现实和增强现实中,手是人类互动的主要输入设备。针对视频中手部关键点识别率低的问题,提出了一种基于深度卷积神经网络的视频手部关键点识别方法。神经网络分为两部分,第一部分是图像超分辨率,目的是提高视频中每一帧的分辨率,使每一帧的图像都清晰,要有高分辨率的输入图像;第二部分是检测模型,为了保证手部关键点检测的实时性,该模型采用轻量级的网络结构来检测手部关键点。结果表明,该方法对视频中的手部关键点有较高的准确率,并在测试集上对模型进行了测试。实验结果表明,加入超分辨率后,视频中的手部关键点检测得到了明显改善。
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Hand keypoint detection with super resolution
Hand interaction is an important research content in computer image processing at present. In sign language recognition, social interaction, virtual reality and augmented reality, the hand is the main input device for human interaction.Aiming at the problem of low recognition rate of hand keypoint in video, this paper proposes a deep convolutional neural network to recognize hand keypoint in video. The neural network is divided into two parts, the first part is image super-resolution, the purpose is to improve the resolution of each frame in the video, so that the image of each frame is clear, to have a high-resolution input image; The second part is the detection model, in order to ensure the real-time performance of hand keypoint detection, the model adopts a lightweight network structure to detect hand keypoint. The results show that this method has a high accuracy rate for the hand keypoint in the video, and the model was tested on the test set. Experimental results show that after adding super-resolution, the hand keypoint detection in the video is significantly improved.
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