Deep inertial poser: learning to reconstruct human pose from sparse inertial measurements in real time
(Deep Inertial Poser: Lernen, menschliche Posen aus wenigen Inertialmessungen in Echtzeit zu rekonstruieren)
We demonstrate a novel deep neural network capable of reconstructing human full body pose in real-time from 6 Inertial Measurement Units (IMUs) worn on the user's body. In doing so, we address several difficult challenges. First, the problem is severely under-constrained as multiple pose parameters produce the same IMU orientations. Second, capturing IMU data in conjunction with ground-truth poses is expensive and difficult to do in many target application scenarios (e.g., outdoors). Third, modeling temporal dependencies through non-linear optimization has proven effective in prior work but makes real-time prediction infeasible. To address this important limitation, we learn the temporal pose priors using deep learning. To learn from sufficient data, we synthesize IMU data from motion capture datasets. A bi-directional RNN architecture leverages past and future information that is available at training time. At test time, we deploy the network in a sliding window fashion, retaining real time capabilities. To evaluate our method, we recorded DIP-IMU, a dataset consisting of 10 subjects wearing 17 IMUs for validation in 64 sequences with 330 000 time instants; this constitutes the largest IMU dataset publicly available. We quantitatively evaluate our approach on multiple datasets and show results from a real-time implementation. DIP-IMU and the code are available for research purposes.
© Copyright 2018 ACM Transactions on Graphics (TOG) archive. ACM. Alle Rechte vorbehalten.
| Schlagworte: | |
|---|---|
| Notationen: | Biowissenschaften und Sportmedizin Naturwissenschaften und Technik |
| Veröffentlicht in: | ACM Transactions on Graphics (TOG) archive |
| Sprache: | Englisch |
| Veröffentlicht: |
2018
|
| Online-Zugang: | https://doi.org/10.1145/3272127.3275108 |
| Jahrgang: | 37 |
| Heft: | 6 |
| Seiten: | Art 185 |
| Dokumentenarten: | Artikel |
| Level: | hoch |