Preserving privacy and video quality through remote physiological signal removal.

Saksham Bhutani, Mohamed Elgendi, Carlo Menon
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Abstract

The revolutionary remote photoplethysmography (rPPG) technique has enabled intelligent devices to estimate physiological parameters with remarkable accuracy. However, the continuous and surreptitious recording of individuals by these devices and the collecting of sensitive health data without users' knowledge or consent raise serious privacy concerns. Here we explore frugal methods for modifying facial videos to conceal physiological signals while maintaining image quality. Eleven lightweight modification methods, including blurring operations, additive noises, and time-averaging techniques, were evaluated using five different rPPG techniques across four activities: rest, talking, head rotation, and gym. These rPPG methods require minimal computational resources, enabling real-time implementation on low-compute devices. Our results indicate that the time-averaging sliding frame method achieved the greatest balance between preserving the information within the frame and inducing a heart rate error, with an average error of 22 beats per minute (bpm). Further, the facial region of interest was found to be the most effective and to offer the best trade-off between bpm errors and information loss.

具有革命性意义的远程血压计(rPPG)技术使智能设备能够非常准确地估算生理参数。然而,这些设备在用户不知情或未征得用户同意的情况下对个人进行持续和偷偷摸摸的记录,并收集敏感的健康数据,这引发了严重的隐私问题。在此,我们探讨了在保持图像质量的前提下修改面部视频以隐藏生理信号的节俭方法。我们使用五种不同的 rPPG 技术评估了 11 种轻量级修改方法,包括模糊操作、加噪和时间平均技术,涉及四种活动:休息、说话、头部旋转和健身。这些 rPPG 方法所需的计算资源极少,可在低计算设备上实时实施。我们的研究结果表明,时间平均滑动帧法在保留帧内信息和引起心率误差之间取得了最大的平衡,平均误差为每分钟 22 次(bpm)。此外,我们还发现面部感兴趣区是最有效的,并且在 bpm 误差和信息损失之间实现了最佳平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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