论文标题

医疗视频的Deepfakes De-nidenification:隐私保护和诊断信息保存

Deepfakes for Medical Video De-Identification: Privacy Protection and Diagnostic Information Preservation

论文作者

Zhu, Bingquan, Fang, Hao, Sui, Yanan, Li, Luming

论文摘要

医学研究的数据共享很困难,因为开源临床数据可能侵犯了患者的隐私。面部去识别的传统方法完全消除了面部信息,因此无法分析面部行为。全身关键点检测的最新进展也取决于面部输入来估计人体关键点。面部和身体关键点在某些医学诊断中都至关重要,并且在识别后的关键点不可分性非常重要。在这里,我们建议使用深层技术(面部交换技术)的解决方案。尽管这种交换方法因入侵隐私和肖像权而受到批评,但它可以相反地保护医疗视频中的隐私:患者的面孔可以换成适当的目标面孔并变得无法识别。但是,它仍然是一个空旷的问题,即交换去识别方法在多大程度上可能影响身体关键点的自动检测。在这项研究中,我们将DeepFake技术应用于帕金森氏病检查视频以去识别受试者,并定量地表明:作为一种去识别方法的面部交换是可靠的,并且保持关键点几乎不变,比传统方法要好得多。这项研究提出了一条视频去识别和关键点保护的管道,从而清除了医疗数据共享的一些道德限制。这项工作可以使开源高质量的医疗视频数据集更加可行,并促进对我们社会有益的未来医学研究。

Data sharing for medical research has been difficult as open-sourcing clinical data may violate patient privacy. Traditional methods for face de-identification wipe out facial information entirely, making it impossible to analyze facial behavior. Recent advancements on whole-body keypoints detection also rely on facial input to estimate body keypoints. Both facial and body keypoints are critical in some medical diagnoses, and keypoints invariability after de-identification is of great importance. Here, we propose a solution using deepfake technology, the face swapping technique. While this swapping method has been criticized for invading privacy and portraiture right, it could conversely protect privacy in medical video: patients' faces could be swapped to a proper target face and become unrecognizable. However, it remained an open question that to what extent the swapping de-identification method could affect the automatic detection of body keypoints. In this study, we apply deepfake technology to Parkinson's disease examination videos to de-identify subjects, and quantitatively show that: face-swapping as a de-identification approach is reliable, and it keeps the keypoints almost invariant, significantly better than traditional methods. This study proposes a pipeline for video de-identification and keypoint preservation, clearing up some ethical restrictions for medical data sharing. This work could make open-source high quality medical video datasets more feasible and promote future medical research that benefits our society.

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