Human pose estimation (HPE) is a key building block for developing AI-based context-aware systems inside the operating room (OR). The 24/7 use of images coming from cameras mounted on the OR ceiling can however raise concerns for privacy, even in the case of depth images captured by RGB-D sensors. Being able to solely use low-resolution privacy-preserving images would address these concerns and help scale up the computer-assisted approaches that rely on such data to a larger number of ORs. In this paper, we introduce the problem of HPE on low-resolution depth images and propose an end-to-end solution that integrates a multi-scale super-resolution network with a 2D human pose estimation network. By exploiting intermediate feature-maps generated at different super-resolution, our approach achieves body pose results on low-resolution images (of size 64x48) that are on par with those of an approach trained and tested on full resolution images (of size 640x480).
Human Pose Estimation on Privacy-Preserving Low-Resolution Depth Images
A multi-scale super-resolution network integrated with a 2D human pose estimation network achieves comparable body pose accuracy on low-resolution depth images as full-resolution images.
- Year
- 2020
- Venue
- arXiv 2020
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- 3
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- arxiv.org/abs/2007.08340v2ARXIV-DEFAULT
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