论文标题

基于面部匿名化的隐私保护无人机巡逻系统

Privacy-Protection Drone Patrol System based on Face Anonymization

论文作者

Lee, Harim, Kim, Myeung Un, Kim, Yeongjun, Lyu, Hyeonsu, Yang, Hyun Jong

论文摘要

机器人市场的增长幅度很大,预计在2024年将比2019年大1.5倍。由于其机动性,机器人引起了安全公司的关注。如今,对于安全机器人来说,无人驾驶飞机(UAV)很快就突出了它们的优势来迅速出现:他们甚至可以去任何人类无法进入的任何危险地方。对于无人机,无人机一直是代表性的模型,并且具有多个由高分辨率摄像机等各种传感器组成的优点。因此,无人机最适合作为移动监视机器人。这些有吸引力的优势,例如高分辨率摄像机和移动性可以是双刃剑,即侵犯隐私。监视无人机采用高分辨率的视频来履行其角色,但是,这些视频包含许多隐私敏感信息。对于那些非常不愿暴露的人来说,不加区分的射击是一个关键问题。为了应对侵犯隐私的侵犯,这项工作提出了面部匿名的无人机巡逻系统。在此系统中,视频中一个人的脸被维护的面部成分变成了不同的面孔。为了构建我们的隐私保护系统,我们采用了最新的生成对抗网络框架,并对这些框架的损失进行了一些修改。通过各种公共面部图像和视频数据集评估我们的面部匿名方法。此外,我们的系统通过由高分辨率相机,配套计算机和无人机控制计算机组成的定制无人机进行评估。最后,我们确认我们的系统可以通过我们的面部匿名算法来保护隐私敏感信息,同时保留机器人感知的性能,即同时定位和映射。

The robot market has been growing significantly and is expected to become 1.5 times larger in 2024 than what it was in 2019. Robots have attracted attention of security companies thanks to their mobility. These days, for security robots, unmanned aerial vehicles (UAVs) have quickly emerged by highlighting their advantage: they can even go to any hazardous place that humans cannot access. For UAVs, Drone has been a representative model and has several merits to consist of various sensors such as high-resolution cameras. Therefore, Drone is the most suitable as a mobile surveillance robot. These attractive advantages such as high-resolution cameras and mobility can be a double-edged sword, i.e., privacy infringement. Surveillance drones take videos with high-resolution to fulfill their role, however, those contain a lot of privacy sensitive information. The indiscriminate shooting is a critical issue for those who are very reluctant to be exposed. To tackle the privacy infringement, this work proposes face-anonymizing drone patrol system. In this system, one person's face in a video is transformed into a different face with facial components maintained. To construct our privacy-preserving system, we have adopted the latest generative adversarial networks frameworks and have some modifications on losses of those frameworks. Our face-anonymzing approach is evaluated with various public face-image and video dataset. Moreover, our system is evaluated with a customized drone consisting of a high-resolution camera, a companion computer, and a drone control computer. Finally, we confirm that our system can protect privacy sensitive information with our face-anonymzing algorithm while preserving the performance of robot perception, i.e., simultaneous localization and mapping.

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