论文标题

与商品Wi-Fi的主题无关的人类姿势图像构建

Subject-independent Human Pose Image Construction with Commodity Wi-Fi

论文作者

Zhou, Shuang, Guo, Lingchao, Lu, Zhaoming, Wen, Xiangming, Zheng, Wei, Wang, Yiming

论文摘要

最近,商品Wi-Fi设备已被证明能够构建人类姿势图像,即人类骨骼,如摄像机。现有论文在构建先前培训样本中的受试者的图像时取得了良好的结果。但是,在涉及新主题的情况下,即不在培训样本中的受试者时,表现会下降。本文着重于解决人类姿势图像构建中的主体化问题。为此,我们将主题定义为域。然后,我们设计了独立于域的神经网络(DINN)来提取主题独立的特征,并将其转换为细粒的人姿势图像。我们还提出了一种新颖的训练方法来训练DINN,并且与域交流方法相比,它没有重新训练的高架。我们构建了一个原型系统,实验结果表明,我们的系统可以在可见的和逐行的场景中构建具有商品Wi-Fi的新受试者的细粒度人类姿势图像,这表明了我们的模型的有效性和主体化能力。

Recently, commodity Wi-Fi devices have been shown to be able to construct human pose images, i.e., human skeletons, as fine-grained as cameras. Existing papers achieve good results when constructing the images of subjects who are in the prior training samples. However, the performance drops when it comes to new subjects, i.e., the subjects who are not in the training samples. This paper focuses on solving the subject-generalization problem in human pose image construction. To this end, we define the subject as the domain. Then we design a Domain-Independent Neural Network (DINN) to extract subject-independent features and convert them into fine-grained human pose images. We also propose a novel training method to train the DINN and it has no re-training overhead comparing with the domain-adversarial approach. We build a prototype system and experimental results demonstrate that our system can construct fine-grained human pose images of new subjects with commodity Wi-Fi in both the visible and through-wall scenarios, which shows the effectiveness and the subject-generalization ability of our model.

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