D3Former:通过显著性引导变换器联合学习可重复的密集检测器和特征增强描述符

IF 1.3 4区 计算机科学 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Junjie Gao , Pengfei Wang , Qiujie Dong , Qiong Zeng , Shiqing Xin , Caiming Zhang
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引用次数: 0

摘要

建立准确且具有代表性的匹配是解决点云配准问题的关键一步。常用的方法包括检测具有显著几何特征的关键点,然后将这些关键点从一帧点云映射到另一帧点云。然而,这类方法受制于采样关键点的重复性。在本文中,我们介绍了一种显著性引导转换器(简称 D3Former),它需要联合学习可重复的密集检测器(Dense Detectors)和特征增强描述符(Feature Enhanced Descriptors)。该模型由特征增强描述符学习(FEDL)模块和重复关键点检测器学习(RKDL)模块组成。FEDL 模块利用区域关注机制来增强特征的独特性,而 RKDL 模块则侧重于检测可重复关键点,以增强匹配能力。在具有挑战性的室内和室外基准上进行的大量实验结果表明,我们提出的方法始终优于最先进的点云匹配方法。例如,当提取的关键点数量减少到 250 个时,RoReg、RoITr 和我们的方法的注册召回分数分别为 64.3%、73.6% 和 76.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
D3Former: Jointly learning repeatable dense detectors and feature-enhanced descriptors via saliency-guided transformer

Establishing accurate and representative matches is a crucial step in addressing the point cloud registration problem. A commonly employed approach involves detecting keypoints with salient geometric features and subsequently mapping these keypoints from one frame of the point cloud to another. However, methods within this category are hampered by the repeatability of the sampled keypoints. In this paper, we introduce a saliency-guided transformer, referred to as D3Former, which entails the joint learning of repeatable Dense Detectors and feature-enhanced Descriptors. The model comprises a Feature Enhancement Descriptor Learning (FEDL) module and a Repetitive Keypoints Detector Learning (RKDL) module. The FEDL module utilizes a region attention mechanism to enhance feature distinctiveness, while the RKDL module focuses on detecting repeatable keypoints to enhance matching capabilities. Extensive experimental results on challenging indoor and outdoor benchmarks demonstrate that our proposed method consistently outperforms state-of-the-art point cloud matching methods. Notably, tests on 3DLoMatch, even with a low overlap ratio, show that our method consistently outperforms recently published approaches such as RoReg and RoITr. For instance, with the number of extracted keypoints reduced to 250, the registration recall scores for RoReg, RoITr, and our method are 64.3%, 73.6%, and 76.5%, respectively.

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来源期刊
Computer Aided Geometric Design
Computer Aided Geometric Design 工程技术-计算机:软件工程
CiteScore
3.50
自引率
13.30%
发文量
57
审稿时长
60 days
期刊介绍: The journal Computer Aided Geometric Design is for researchers, scholars, and software developers dealing with mathematical and computational methods for the description of geometric objects as they arise in areas ranging from CAD/CAM to robotics and scientific visualization. The journal publishes original research papers, survey papers and with quick editorial decisions short communications of at most 3 pages. The primary objects of interest are curves, surfaces, and volumes such as splines (NURBS), meshes, subdivision surfaces as well as algorithms to generate, analyze, and manipulate them. This journal will report on new developments in CAGD and its applications, including but not restricted to the following: -Mathematical and Geometric Foundations- Curve, Surface, and Volume generation- CAGD applications in Numerical Analysis, Computational Geometry, Computer Graphics, or Computer Vision- Industrial, medical, and scientific applications. The aim is to collect and disseminate information on computer aided design in one journal. To provide the user community with methods and algorithms for representing curves and surfaces. To illustrate computer aided geometric design by means of interesting applications. To combine curve and surface methods with computer graphics. To explain scientific phenomena by means of computer graphics. To concentrate on the interaction between theory and application. To expose unsolved problems of the practice. To develop new methods in computer aided geometry.
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