Abstract

Feature tracking in image collections significantly affects the efficiency and accuracy of Structure from Motion (SFM). Insufficient correspondences may result in disconnected structures and incomplete components, while the redundant correspondences containing incorrect ones may yield to folded and superimposed structures. In this paper, we present a Superpixel-based feature tracking method for structure from motion. In the proposed method, we first propose to use a joint approach to detect local keypoints and compute descriptors. Second, the superpixel-based approach is used to generate labels for the input image. Third, we combine the Speed Up Robust Feature and binary test in the generated label regions to produce a set of combined descriptors for the detected keypoints. Fourth, the locality-sensitive hash (LSH)-based k nearest neighboring matching (KNN) is utilized to produce feature correspondences, and then the ratio test approach is used to remove outliers from the previous matching collection. Finally, we conduct comprehensive experiments on several challenging benchmarking datasets including highly ambiguous and duplicated scenes. Experimental results show that the proposed method gets better performances with respect to the state of the art methods.

Highlights

  • In recent years, structure from motion (SFM) has received much attention from the computer vision and graphics communities

  • To feature tracking tracking method method (SPFT), (SPFT), To improve improve the the quality quality of of SFM, SFM, we we propose propose aa superpixel-based superpixel-based feature which consists of feature detection, descriptor computing, feature matching, and outliers removing

  • To improve the quality of 3D reconstruction system, we propose a joint computing procedure that include Speeded Up and Robust Features (SURF) and binary test [36], the former is use to describe the keypoints located in the texture areas, the latter is used in the textureless areas

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Summary

Introduction

Structure from motion (SFM) has received much attention from the computer vision and graphics communities. A classic SFM framework usually consists of camera calibration, feature tracking, camera pose estimation, triangulation, and bundle adjustment [2]. It is well-known that SFM plays an important role in many research areas [3], such as augment reality, multi-view stereo [4], image-based localization [5], 3D reconstruction, image-based navigation [6], place recognition, autonomous driving, camera localization, and geographic information system (GIS) [7,8]. With the development of Graphics Process Unit (GPU), Wu et al [12] implemented a GPU accelerated SIFT named SIFTGPU to reduce the computation time of feature tracking.

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