作者
Kaikai Deng, Dong Zhao, Zihan Zhang, Shuyue Wang, Wenxin Zheng, Huadong Ma
发表日期
2023/10/18
期刊
IEEE Transactions on Mobile Computing
出版商
IEEE
简介
Millimeter wave radar is gaining traction recently for enabling privacy-preserving human sensing. However, the lack of large-scale, dynamic radar datasets impedes progress in developing robust and generalized deep learning models for mobile sensing applications. To address this problem, we resort to designing a software pipeline that leverages wealthy dynamic videos to generate synthetic radar data, but it faces two key challenges including i) incorrect camera and human positions leading to erroneous superposition of signal intensity and ii) the signal reflection of the background and humans in mobile scenes. To this end, we design Midas++ to utilize rich videos to generate realistic radar data via two components: (i) a human mesh fitting and calibration component calculates the camera ego-motion parameters to calibrate the extracted human positions; (ii) a reflection and noise signal estimation …
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