Abstract

Image-based three-dimensional (3D) reconstruction is a process of extracting 3D information from an object or entire scene while using low-cost vision sensors. A structure-from-motion coupled with multi-view stereo (SFM-MVS) pipeline is a widely used technique that allows 3D reconstruction from a collection of unordered images. The SFM-MVS pipeline typically comprises different processing steps, including feature extraction and feature matching, which provide the basis for automatic 3D reconstruction. However, surfaces with poor visual texture (repetitive, monotone, etc.) challenge the feature extraction and matching stage and affect the quality of reconstruction. The projection of image patterns while using a video projector during the image acquisition process is a well-known technique that has been shown to be successful for such surfaces. In this study, we evaluate the performance of different feature extraction methods on texture-less surfaces with the application of synthetically generated noise patterns (images). Seven state-of-the-art feature extraction methods (HARRIS, Shi-Tomasi, MSER, SIFT, SURF, KAZE, and BRISK) are evaluated on problematic surfaces in two experimental phases. In the first phase, the 3D reconstruction of real and virtual planar surfaces evaluates image patterns while using all feature extraction methods, where the patterns with uniform histograms have the most suitable morphological features. The best performing pattern from Phase One is used in Phase Two experiments in order to recreate a polygonal model of a 3D printed object using all of the feature extraction methods. The KAZE algorithm achieved the lowest standard deviation and mean distance values of 0.0635 mm and −0.00921 mm, respectively.

Highlights

  • Structure-from-motion coupled with multi-view stereo (SFM-MVS) techniques has been a focus of research in the fields of photogrammetry and computer vision, owing to the availability of low-cost vision sensors and methods for automated image processing [1,2]

  • The ratio of the number of vertices to the standard deviation is introduced in order to compare the root mean square (RMS) for each point cloud generated with different feature extraction methods and evaluate the performance of image patterns

  • We evaluated the performance of feature extraction methods with synthetic noise patterns on texture-less surfaces

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Summary

Introduction

Structure-from-motion coupled with multi-view stereo (SFM-MVS) techniques has been a focus of research in the fields of photogrammetry (image-based three-dimensional reconstruction) and computer vision, owing to the availability of low-cost vision sensors and methods for automated image processing [1,2]. SFM is a non-contact measuring technique that is used to find a set of feature points that appear in different images. By utilizing the orientation parameters, the three-dimensional (3D) coordinates of the camera stations and sparse point cloud can be estimated in 3D space. MVS techniques can be employed to group the images that share common viewpoints and add more points to the SFM cloud [17]. Surfaces with poor visual texture (uniform, monotone, repetitive textures, etc.) pose a problem that is related to the extraction of feature points required for the correspondence search (tie point detection) between different images. Surfaces with uniform and monotone visual textures pose problems and affect the quality of 3D reconstruction. Texture analysis has been widely investigated in computer vision and pattern recognition applications because of its ability to extract discriminative features [18]

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