Due to the COVID-19 epidemic, video conferencing has evolved as a new paradigm of communication and teamwork. However, private and personal information can be easily leaked through cameras during video conferencing. This includes leakage of a person's appearance as well as the contents in the background. This paper proposes a novel way of using online low-resolution thermal images as conditions to guide the synthesis of RGB images, bringing a promising solution for real-time video conferencing when privacy leakage is a concern. SPADE-SR (Spatially-Adaptive De-normalization with Self Resampling), a variant of SPADE, is adopted to incorporate the spatial property of a thermal heatmap and the non-thermal property of a normal, privacy-free pre-recorded RGB image provided in a form of latent code. We create a PAIR-LRT-Human (LRT = Low-Resolution Thermal) dataset to validate our claims. The result enables a convenient way of video conferencing where users no longer need to groom themselves and tidy up backgrounds for a short meeting. Additionally, it allows a user to switch to a different appearance and background during a conference.
翻译:由于COVID-19疫情的影响,视频会议已经成为新的沟通和协作范式。但是,在视频会议期间,私人和个人信息很容易通过摄像头泄露。这包括一个人的外貌以及背景中的内容泄露。本文提出了一种新的方法,利用在线低分辨率热成像作为条件引导合成RGB图像,为实时视频会议提供了有前途的解决方案,当隐私泄露是一个问题时。采用SPADE-SR(自适应空间去归一化与自重采样),SPADE的一个变体,以合并热成像的空间特性和以潜在工程的形式提供的非热性质的常规、无隐私预录RGB图像。我们创建了一个PAIR-LRT-Human(LRT=低分辨率热成像)数据集来验证我们的说法。结果使视频会议变得更加便捷,用户不需要为短时间会议打扮自己和整理背景。此外,它允许用户在会议期间切换外观和背景。