School of Integrated Technology, YICT, Yonsei University, Seoul, Republic of Korea.
Comput Intell Neurosci. 2022 Apr 22;2022:5389359. doi: 10.1155/2022/5389359. eCollection 2022.
Fully autonomous vehicles (FAVs) lack monitoring inside the cabin. Therefore, an in-cabin monitoring system (IMS) is required for surveilling people causing irregular or abnormal situations. However, monitoring in the public domain allows disclosure of an individual's face, which goes against privacy preservation. Furthermore, there is a contrary demand for privacy in the IMS of AVs. Therefore, an intelligent IMS must simultaneously satisfy the contrary requirements of personal privacy protection and person identification during abnormal situations. In this study, we proposed a privacy-preserved IMS, which can reidentify anonymized virtual individual faces in an abnormal situation. This IMS includes a step for extracting facial features, which is accomplished by the edge device (onboard unit) of the AV. This device anonymizes an individual's facial identity before transmitting the video frames to a data server. We created different abnormal scenarios in the vehicle cabin. Further, we reidentified the involved person by using the anonymized virtual face and the reserved feature vectors extracted from the suspected individual. Overall, the proposed approach preserves personal privacy while maintaining security in surveillance systems, such as for in-cabin monitoring of FAVs.
完全自动驾驶汽车(FAV)缺乏对车内的监控。因此,需要一个车内监控系统(IMS)来监视引起不规则或异常情况的人。然而,在公共场所进行监控会披露个人的面部,这违反了隐私保护的原则。此外,AV 的 IMS 中还存在隐私保护的相反需求。因此,智能 IMS 必须同时满足在异常情况下个人隐私保护和人员识别的相反要求。在本研究中,我们提出了一种隐私保护的 IMS,它可以在异常情况下重新识别匿名虚拟个人面部。该 IMS 包括提取面部特征的步骤,这是由 AV 的边缘设备(车载单元)完成的。该设备在将视频帧传输到数据服务器之前对个人的面部身份进行匿名化。我们在车辆座舱内创建了不同的异常场景。然后,我们使用从可疑个体中提取的匿名虚拟面部和保留的特征向量来重新识别涉案人员。总的来说,所提出的方法在监控系统中保护了个人隐私,同时维护了安全,例如 FAV 的车内监控。