{"id":591829,"date":"2019-06-13T09:21:08","date_gmt":"2019-06-13T16:21:08","guid":{"rendered":"https:\/\/www.microsoft.com\/en-us\/research\/?p=591829"},"modified":"2019-06-13T09:23:39","modified_gmt":"2019-06-13T16:23:39","slug":"envisioning-privacy-preserving-image-based-localization-for-augmented-reality","status":"publish","type":"post","link":"https:\/\/www.microsoft.com\/en-us\/research\/blog\/envisioning-privacy-preserving-image-based-localization-for-augmented-reality\/","title":{"rendered":"Envisioning privacy preserving image-based localization for augmented reality"},"content":{"rendered":"
<\/a><\/p>\n Advances in augmented reality (AR) and mobile robotics promise to revolutionize how we see and interact with our physical world in the future. Today, AR and mixed reality (MR) devices, in both smart phone or eyeglass form factors, superimpose digital content relating to the world around us. To accomplish this, MR devices need to know their precise location in relation to the physical world. This is known as camera localization (or camera pose estimation) and is a core task in MR, drones, self-driving cars, and mobile robotics. Because GPS does not function indoors and is not accurate enough for next generation mixed reality and autonomous platforms, MR devices must determine their indoors position using images from device cameras. Camera localization techniques require access to a 3D digital map of the scene, that is often stored persistently. Although images are not stored along with these maps, entities with access to these maps would sometimes be able to infer sensitive information about the scene. This sensitive information could include knowledge about the geometry, appearance, and layout of private spaces and knowledge about objects contained in that space.<\/p>\n As companies and organizations race to build the required \u201cMR Cloud\u201d infrastructure for these MR systems, the general public has become increasingly concerned with the privacy and security implications of using MR in sensitive environments such as homes, offices, hospitals, schools, and industrial spaces or confidential facilities. Yet in view of wider adoption of MR technologies, surprisingly little attention has been given to the critical nature of the privacy and security implications of MR.<\/p>\n A team of scientists at Microsoft and academic collaborators have been investigating new algorithmic techniques to address these privacy implications. Their pioneering ideas are described in two papers to be presented at the IEEE Computer Society Conference on Computer Vision and Pattern Recognition<\/a> (CVPR 2019) June 16-20 in Long Beach, California. In their first paper, they show for the first time that 3D point clouds and features required for camera localization are prone to a new type of privacy attack. This work aims to alert the community of new privacy implications of saving 3D maps of the environment\u2014implications that are more serious than what is currently assumed. In the second paper, the team formulated a new research problem \u2013 the privacy preserving image-based localization problem and presented the first solution for this problem. Their solution involves geometrically transforming the 3D points in a way that conceals the scene geometry, defends against the new privacy attack, but importantly still allows one to efficiently and accurately compute camera pose from images. Let\u2019s take a closer look.<\/p>\nNew camera localization technology for sensitive environments can keep images and map data confidential<\/h3>\n