Camera sensors are increasingly being combined with machine learning to perform various tasks such as intelligent surveillance. Due to its computational complexity, most of these machine learning algorithms are offloaded to the cloud for processing. However, users are increasingly concerned about privacy issues such as function creep and malicious usage by third-party cloud providers. To alleviate this, we propose an edge-based filtering stage that removes privacy-sensitive attributes before the sensor data are transmitted to the cloud. We use state-of-the-art image manipulation techniques that leverage disentangled representations to achieve privacy filtering. We define opt-in and opt-out filter operations and evaluate their effectiveness for filtering private attributes from face images. Additionally, we examine the effect of naturally occurring correlations and residual information on filtering. We find the results promising and believe this elicits further research on how image manipulation can be used for privacy preservation.
翻译:相机传感器正越来越多地与机器学习相结合,以完成智能监视等各种任务。由于其计算的复杂性,这些机器学习算法大多被卸到云层进行处理。然而,用户日益关注隐私问题,如功能爬升和第三方云源供应商恶意使用等。为缓解这一问题,我们提议在传感器数据传输到云层之前,用边缘过滤阶段去除隐私敏感属性。我们使用最先进的图像操纵技术,利用分解的表达方式实现隐私过滤。我们定义了选入和选出过滤器操作,并评估了它们从脸部图像过滤私人属性的效果。此外,我们研究了自然发生的关联和残余信息对过滤的影响。我们发现结果很有希望,相信这引起了关于如何将图像操纵用于隐私保护的进一步研究。