Abstract

Abstract. Nowadays various methods and sensors are available for 3D reconstruction tasks; however, it is still necessary to integrate advantages of different technologies for optimizing the quality 3D models. Computed tomography (CT) is an imaging technique which takes a large number of radiographic measurements from different angles, in order to generate slices of the object, however, without colour information. The aim of this study is to put forward a framework to extract colour information from photogrammetric images for corresponding Computed Tomography (CT) surface data with high precision. The 3D models of the same object from CT and photogrammetry methods are generated respectively, and a transformation matrix is determined to align the extracted CT surface to the photogrammetric point cloud through a coarse-to-fine registration process. The estimated pose information of images to the photogrammetric point clouds, which can be obtained from the standard image alignment procedure, also applies to the aligned CT surface data. For each camera pose, a depth image of CT data is calculated by projecting all the CT points to the image plane. The depth image is in principle should agree with the corresponding photogrammetric image. The points, which cannot be seen from the pose, but are also projected on the depth image, are excluded from the colouring process. This is realized by comparing the range values of neighbouring pixels and finding the corresponding 3D points with larger range values. The same procedure is implemented for all the image poses to obtain the coloured CT surface. Thus, by using photogrammetric images, we achieve a coloured CT dataset with high precision, which combines the advantages from both methods. Rather than simply stitching different data, we deep-dive into the photogrammetric 3D reconstruction process and optimize the CT data with colour information. This process can also provide an initial route and more options for other data fusion processes.

Highlights

  • The object involved in this research and presented below is a classical gyroscope with a detailed and complex structure

  • 3.3.1 Data acquisition process of the Golden Gnat: With the setup introduced in section 3.2, the Golden Gnat is imaged with Lego bricks fixing its base

  • The photogrammetric 3D reconstruction is implemented via RealityCapture software

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Summary

Introduction

The object involved in this research and presented below is a classical gyroscope with a detailed and complex structure. Overall, it is part of a German pilot project to digitize an existing collection of gyroscopic instruments in 3D Virtual Reality models (Fritsch et al, 2018). The digitization task relies on methods with high precision options. Photogrammetric 3D reconstruction with appropriately collected high resolution images is able to reach high quality textured surface models. Endoscopes are introduced as a supplementary method for local reconstructions. Besides the photogrammetric application with various sensors, CT is another method to complement the data for the internal and invisible part of the object

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