论文标题
使用不完美数据的联合远程生理测量
Federated Remote Physiological Measurement with Imperfect Data
论文作者
论文摘要
支持远程医疗保健的技术的需求日益增长,这是由老龄化的人口和19日大流行的急剧强调。在与健康相关的机器学习应用程序中,学习预测模型而无需离开私人设备的预测模型的能力很有吸引力,尤其是当这些数据可能包含功能(例如,人体的照片或视频)时,这些功能使识别主题琐碎和/或培训数据量很大(例如,未压缩视频)。基于摄像机的远程生理感应有助于可扩展和低成本的测量,但是一个任务的一个典型示例,涉及分析包含可识别图像和敏感健康信息的高率视频。联合学习可以使保护隐私化的分散培训具有多种对基于摄像机的感应有益的特性。我们开发了第一个基于联合学习摄像头的传感系统,并表明它可以通过传统的最先进的监督方法竞争性能。但是,在存在损坏的数据(例如,视频或标签噪声)的情况下,来自一些设备的重量的性能很快就会降解。为了解决这个问题,我们利用有关视频中预期噪声概况的知识来智能地调整服务器上模型权重的方式。我们的结果表明,即使信噪比较低,这也会显着改善模型的鲁棒性
The growing need for technology that supports remote healthcare is being acutely highlighted by an aging population and the COVID-19 pandemic. In health-related machine learning applications the ability to learn predictive models without data leaving a private device is attractive, especially when these data might contain features (e.g., photographs or videos of the body) that make identifying a subject trivial and/or the training data volume is large (e.g., uncompressed video). Camera-based remote physiological sensing facilitates scalable and low-cost measurement, but is a prime example of a task that involves analysing high bit-rate videos containing identifiable images and sensitive health information. Federated learning enables privacy-preserving decentralized training which has several properties beneficial for camera-based sensing. We develop the first mobile federated learning camera-based sensing system and show that it can perform competitively with traditional state-of-the-art supervised approaches. However, in the presence of corrupted data (e.g., video or label noise) from a few devices the performance of weight averaging quickly degrades. To address this, we leverage knowledge about the expected noise profile within the video to intelligently adjust how the model weights are averaged on the server. Our results show that this significantly improves upon the robustness of models even when the signal-to-noise ratio is low