TL;DR
This paper introduces a specialized in-bed pose estimation approach using infrared imaging and HOG rectification, fine-tuning a pre-trained CNN to address lighting and perspective challenges with a shallow dataset.
Contribution
It presents a novel in-bed pose estimation method combining IRS imaging, HOG rectification, and CNN fine-tuning, tailored for unique lighting and pose perspectives.
Findings
HOG rectification improved pose estimation by 26.4% in PCK0.1.
IRS imaging provided consistent data under varying lighting conditions.
Fine-tuning CNN on a shallow in-bed dataset enhanced accuracy.
Abstract
Although human pose estimation for various computer vision (CV) applications has been studied extensively in the last few decades, yet in-bed pose estimation using camera-based vision methods has been ignored by the CV community because it is assumed to be identical to the general purpose pose estimation methods. However, in-bed pose estimation has its own specialized aspects and comes with specific challenges including the notable differences in lighting conditions throughout a day and also having different pose distribution from the common human surveillance viewpoint. In this paper, we demonstrate that these challenges significantly lessen the effectiveness of existing general purpose pose estimation models. In order to address the lighting variation challenge, infrared selective (IRS) image acquisition technique is proposed to provide uniform quality data under various lighting…
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