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Poster Abstract: Protecting User Data Privacy with Adversarial Perturbations. 摘要:利用对抗性扰动保护用户数据隐私。
Pub Date : 2021-05-01 DOI: 10.1145/3412382.3458776
Ziqi Wang, Brian Wang, Mani Srivastava

The increased availability of on-body sensors gives researchers access to rich time-series data, many of which are related to human health conditions. Sharing such data can allow cross-institutional collaborations that create advanced data-driven models to make inferences on human well-being. However, such data are usually considered privacy-sensitive, and publicly sharing this data may incur significant privacy concerns. In this work, we seek to protect clinical time-series data against membership inference attacks, while maximally retaining the data utility. We achieve this by adding an imperceptible noise to the raw data. Known as adversarial perturbations, the noise is specially trained to force a deep learning model to make inference mistakes (in our case, mispredicting user identities). Our preliminary results show that our solution can better protect the data from membership inference attacks than the baselines, while succeeding in all the designed data quality checks.

越来越多的人体传感器使研究人员能够获得丰富的时间序列数据,其中许多数据与人类健康状况有关。共享这些数据可以促进跨机构合作,从而创建先进的数据驱动模型,对人类福祉做出推断。然而,这些数据通常被认为是隐私敏感的,公开分享这些数据可能会引起严重的隐私问题。在这项工作中,我们寻求保护临床时间序列数据免受成员推理攻击,同时最大限度地保留数据效用。我们通过在原始数据中添加难以察觉的噪声来实现这一点。这种噪声被称为对抗性扰动,经过专门训练,迫使深度学习模型犯推理错误(在我们的例子中,错误地预测了用户身份)。我们的初步结果表明,我们的解决方案可以比基线更好地保护数据免受隶属度推理攻击,同时成功地完成了所有设计的数据质量检查。
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引用次数: 1
Poster Abstract: 3D Activity Localization With Multiple Sensors. 海报摘要:多传感器三维活动定位。
Pub Date : 2017-04-01 DOI: 10.1145/3055031.3055057
Xinyu Li, Yanyi Zhang, Jianyu Zhang, Shuhong Chen, Yue Gu, Richard A Farneth, Ivan Marsic, Randall S Burd

We present a deep learning framework for fast 3D activity localization and tracking in a dynamic and crowded real world setting. Our training approach reverses the traditional activity localization approach, which first estimates the possible location of activities and then predicts their occurrence. Instead, we first trained a deep convolutional neural network for activity recognition using depth video and RFID data as input, and then used the activation maps of the network to locate the recognized activity in the 3D space. Our system achieved around 20cm average localization error (in a 4m × 5m room) which is comparable to Kinect's body skeleton tracking error (10-20cm), but our system tracks activities instead of Kinect's location of people.

我们提出了一个深度学习框架,用于在动态和拥挤的现实世界环境中快速定位和跟踪3D活动。我们的训练方法推翻了传统的活动定位方法,即首先估计活动的可能位置,然后预测活动的发生。相反,我们首先使用深度视频和RFID数据作为输入,训练深度卷积神经网络进行活动识别,然后使用网络的激活图在3D空间中定位识别的活动。我们的系统实现了大约20厘米的平均定位误差(在4米×5米的房间内),这与Kinect的身体骨骼跟踪误差(10-20厘米)相当,但我们的系统跟踪的是活动,而不是Kinect的人的位置。
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引用次数: 0
Identifying Drug (Cocaine) Intake Events from Acute Physiological Response in the Presence of Free-living Physical Activity. 识别药物(可卡因)摄入事件的急性生理反应,存在自由生活的体育活动。
Syed Monowar Hossain, Amin Ahsan Ali, Mahbubur Rahman, Emre Ertin, David Epstein, Ashley Kennedy, Kenzie Preston, Annie Umbricht, Yixin Chen, Santosh Kumar

A variety of health and behavioral states can potentially be inferred from physiological measurements that can now be collected in the natural free-living environment. The major challenge, however, is to develop computational models for automated detection of health events that can work reliably in the natural field environment. In this paper, we develop a physiologically-informed model to automatically detect drug (cocaine) use events in the free-living environment of participants from their electrocardiogram (ECG) measurements. The key to reliably detecting drug use events in the field is to incorporate the knowledge of autonomic nervous system (ANS) behavior in the model development so as to decompose the activation effect of cocaine from the natural recovery behavior of the parasympathetic nervous system (after an episode of physical activity). We collect 89 days of data from 9 active drug users in two residential lab environments and 922 days of data from 42 active drug users in the field environment, for a total of 11,283 hours. We develop a model that tracks the natural recovery by the parasympathetic nervous system and then estimates the dampening caused to the recovery by the activation of the sympathetic nervous system due to cocaine. We develop efficient methods to screen and clean the ECG time series data and extract candidate windows to assess for potential drug use. We then apply our model on the recovery segments from these windows. Our model achieves 100% true positive rate while keeping the false positive rate to 0.87/day over (9+ hours/day of) lab data and to 1.13/day over (11+ hours/day of) field data.

各种各样的健康和行为状态可以从生理测量中推断出来,这些测量现在可以在自然的自由生活环境中收集。然而,主要的挑战是开发能够在自然现场环境中可靠地自动检测健康事件的计算模型。在本文中,我们开发了一个生理知情模型,从参与者的心电图(ECG)测量中自动检测他们自由生活环境中的药物(可卡因)使用事件。在该领域可靠检测吸毒事件的关键是将自主神经系统(ANS)行为的知识纳入模型开发,将可卡因的激活作用从副交感神经系统的自然恢复行为(在一次体育活动之后)中分解出来。我们收集了9名活跃吸毒者在两个居住实验室环境中的89天数据和42名活跃吸毒者在野外环境中的922天数据,共计11,283小时。我们开发了一个模型,跟踪副交感神经系统的自然恢复,然后估计由于可卡因激活交感神经系统对恢复造成的抑制。我们开发了有效的方法来筛选和清理ECG时间序列数据,并提取候选窗口来评估潜在的药物使用。然后,我们将模型应用于这些窗口的恢复段。我们的模型实现了100%的真阳性率,同时将假阳性率保持在0.87/天(9+小时/天)的实验室数据和1.13/天(11+小时/天)的现场数据。
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引用次数: 0
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IPSN : [proceedings]. IPSN (Conference)
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