We introduce a framework for navigating through cluttered environments by connecting multiple cameras together while simultaneously preserving privacy. Occlusions and obstacles in large environments are often challenging situations for navigation agents because the environment is not fully observable from a single camera view. Given multiple camera views of an environment, our approach learns to produce a multiview scene representation that can only be used for navigation, provably preventing one party from inferring anything beyond the output task. On a new navigation dataset that we will publicly release, experiments show that private multiparty representations allow navigation through complex scenes and around obstacles while jointly preserving privacy. Our approach scales to an arbitrary number of camera viewpoints. We believe developing visual representations that preserve privacy is increasingly important for many applications such as navigation.
翻译:我们引入了一个框架,通过将多个摄像头连接在一起,同时保护隐私,在混乱的环境中航行。大型环境中的隔离和障碍往往对导航剂构成挑战,因为环境无法从单一的摄像头视图中完全观察。鉴于环境的多重摄像视图,我们的方法学会制作一个只能用于导航的多视角场景演示,可以明显地防止一方推断出超出产出任务以外的任何东西。关于我们将公开发布的新导航数据集,实验显示,私人多方代表机构允许通过复杂的场景和围绕障碍进行导航,同时共同保护隐私。我们对任意数量的摄像头视图的处理尺度。我们认为,开发保护隐私对于导航等许多应用来说日益重要的视觉演示。