2023
Conference article  Open Access

GPU-Accelerating hierarchical descriptors for point set registration

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



Back to previous page
BibTeX entry
@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}
}

CHARITY
Cloud for Holography and Cross Reality


OpenAIRE