We study the problem of extracting biometric information of individuals by looking at shadows of objects cast on diffuse surfaces. We show that the biometric information leakage from shadows can be sufficient for reliable identity inference under representative scenarios via a maximum likelihood analysis. We then develop a learning-based method that demonstrates this phenomenon in real settings, exploiting the subtle cues in the shadows that are the source of the leakage without requiring any labeled real data. In particular, our approach relies on building synthetic scenes composed of 3D face models obtained from a single photograph of each identity. We transfer what we learn from the synthetic data to the real data using domain adaptation in a completely unsupervised way. Our model is able to generalize well to the real domain and is robust to several variations in the scenes. We report high classification accuracies in an identity classification task that takes place in a scene with unknown geometry and occluding objects.
翻译:我们研究个人生物鉴别信息的问题,通过观察分散表面所投物体的影子,研究个人生物鉴别信息的问题。我们表明,从阴影中生物鉴别信息渗漏足以在有代表性的假设情景下通过最大可能性的分析进行可靠的身份推断。然后我们开发一种基于学习的方法,在真实环境中展示这一现象,利用作为渗漏源的阴影中的微妙线索,而不需要任何有标签的真实数据。特别是,我们的方法依靠建立合成场景,由从每个身份的单一照片中获取的3D脸型模型组成。我们用完全不受监督的方式将我们从合成数据中学到的数据转换到实际数据。我们的模型能够向真实领域概括,并且对场面的若干变化具有很强的力度。我们报告身份分类任务高度分类,该任务发生在有未知的几何和occluding天体的场景区。