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Local feature descriptor using discrete first and second fundamental forms

机译:本地特征描述符使用离散的第一和第二基本形式

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3D object recognition from point clouds is a fast-growing field of research in computer vision. 3D object recognition methods can be classified into two categories: global featurebased and local feature-based methods. The local feature-based methods are more popular than global ones. Because the global feature-based methods need a prior segmentation of the scene, they are not suitable for real-world scenes. Many previous local descriptor methods limit their performance by introducing a local reference frame or axis (LRF/A). Estimating the LRF/A for each keypoint leads to extra computational time and error. We use the fundamental theorem of surface theory to introduce a simple and efficient local feature descriptor based on the coefficients of discrete first and second fundamental forms. The proposed method overrides the necessity of an LRF/A, and it required a small feature dimension of seven, which means it is a lowcomplexity and fast procedure. To assess the proposed method, we have compared it with eight state-of-the-art descriptors and applied it to the three popular datasets to extract features and recognize the correspondences. Experimental results demonstrate the superiority of the proposed approach to the compared methods in terms of pairwise registration measurements, recall versus 1-precision curve, and the computational time. (c) 2021 SPIE and IS&T [DOI: 10.1117/1.JEI.30.2 .023008]3D object recognition is one of the most important topics in computer vision with numerous applications such as autonomous robotics, monitoring and surveillance, surgery, and urban object classification.1-5 In traditional object recognition techniques, images are used, and the depth information is not explicitly provided, so they are sensitive to illumination and shadow variations.6,7 The recent introduction of low-cost range sensors, e.g., Microsoft Kinect, has raised
机译:3D点云的对象识别是计算机视觉中快速发展的研究领域。 3D对象识别方法可以分为两类:全局efficeBased和基于本地特征的方法。基于本地特征的方法比全局方式更受欢迎。因为基于全局特征的方法需要现有的场景分割,所以它们不适合现实世界的场景。许多以前的本地描述符方法通过引入本地参考帧或轴(LRF / A)来限制它们的性能。为每个关键点估算LRF / A导致额外的计算时间和错误。我们使用表面理论的基本定理来引入基于离散的第一和第二基本形式的系数的简单有效的本地特征描述符。所提出的方法覆盖了LRF / A的必要性,并且需要七个小特征尺寸,这意味着它是低复杂性和快速手术。为了评估所提出的方法,我们将其与八个最先进的描述符进行了比较并将其应用于三个流行的数据集以提取特征并识别通信。实验结果表明,在成对登记测量方面,召回与1精度曲线和计算时间,所提出的方法的优越性。 (c)2021 SPIE和IS&T [DOI:10.1117 / 1.JEI.30.2 .023008] 3D对象识别是计算机视觉中最重要的主题之一,具有自主机器人,监测和监测,手术和城市对象等众多应用在传统的对象识别技术中,使用图像,使用图像,没有明确地提供深度信息,因此它们对照明和阴影变化很敏感.6,7最近的低成本范围传感器引入,例如微软Kinect,已经提出

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