3 research outputs found

    Feature-Based 6-DoF Camera Localization Using Prior Point Cloud and Images

    No full text

    Camera Pose Estimation from Street-view Snapshots and Point Clouds

    Get PDF
    This PhD thesis targets on two research problems: (1) How to efļ¬ciently and robustly estimate the camera pose of a query image with a map that contains street-view snapshots and point clouds; (2) Given the estimated camera pose of a query image, how to create meaningful and intuitive applications with the map data. To conquer the ļ¬rst research problem, we systematically investigated indirect, direct and hybrid camera pose estimation strategies. We implemented state-of-the-art methods and performed comprehensive experiments in two public benchmark datasets considering outdoor environmental changes from ideal to extremely challenging cases. Our key ļ¬ndings are: (1) the indirect method is usually more accurate than the direct method when there are enough consistent feature correspondences; (2) The direct method is sensitive to initialization, but under extreme outdoor environmental changes, the mutual-information-based direct method is more robust than the feature-based methods; (3) The hybrid method combines the strength from both direct and indirect method and outperforms them in challenging datasets. To explore the second research problem, we considered inspiring and useful applications by exploiting the camera pose together with the map data. Firstly, we invented a 3D-map augmented photo gallery application, where imagesā€™ geo-meta data are extracted with an indirect camera pose estimation method and photo sharing experience is improved with the augmentation of 3D map. Secondly, we designed an interactive video playback application, where an indirect method estimates video framesā€™ camera pose and the video playback is augmented with a 3D map. Thirdly, we proposed a 3D visual primitive based indoor object and outdoor scene recognition method, where the 3D primitives are accumulated from the multiview images
    corecore