Dutta S., Russig B., Gumhold S.
Point cloud registration, 3D acquisition
3D reconstruction based on structure from motion is one of the most techniques to produce sparse point-cloud model and camera parameter. However, this technique heavily relies on feature tracking method to obtain feature correspondences, then resulting in a heavy computation burden. To speed up 3D reconstruction, in this paper, we design a novel GPU-accelerated feature tracking (GFT) method for large-scale structure from motion (SFM)-based 3D reconstruction. The proposed GFT method consists of GPU-based Gaussian of image (DOG) keypoint detector, RootSIFT descriptor extractor, k nearest matching, and outlier removing. Firstly, our GPU-based DOG implementation can detect thousands of keypoints in real-time, whose speed is 30 times faster than that of the CPU version. Secondly, our GPU-based RootSIFT descriptor can compute thousands of descriptors in real-time. Thirdly, our GPU-based descriptor matching is 10 times faster than that of the state-of-the-art methods. Finally, we conduct thorough experiments on different datasets to evaluate the proposed method. Experimental results demonstrate the effectiveness and efficiency of the proposed method.
Source: ITALIAN CHAPTER CONFERENCE, pp. 59-69. Matera, Italy, 16-17/11/2023
Publisher: The Eurographics Association
@inproceedings{oai:iris.cnr.it:20.500.14243/499681, title = {GPU-Accelerating hierarchical descriptors for point set registration}, author = {Dutta S. and Russig B. and Gumhold S.}, publisher = {The Eurographics Association}, booktitle = {ITALIAN CHAPTER CONFERENCE, pp. 59-69. Matera, Italy, 16-17/11/2023}, year = {2023} }