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3D Surface Reconstruction of Noisy Point Clouds Using Growing Neural Gas: 3D Object/Scene Reconstruction

机译:使用增长的神经气体对嘈杂点云进行3D表面重建:3D对象/场景重建

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摘要

With the advent of low-cost 3D sensors and 3D printers, scene and object 3D surface reconstruction has become an important research topic in the last years. In this work, we propose an automatic (unsupervised) method for 3D surface reconstruction from raw unorganized point clouds acquired using low-cost 3D sensors. We have modified the growing neural gas network, which is a suitable model because of its flexibility, rapid adaptation and excellent quality of representation, to perform 3D surface reconstruction of different real-world objects and scenes. Some improvements have been made on the original algorithm considering colour and surface normal information of input data during the learning stage and creating complete triangular meshes instead of basic wire-frame representations. The proposed method is able to successfully create 3D faces online, whereas existing 3D reconstruction methods based on self-organizing maps required post-processing steps to close gaps and holes produced during the 3D reconstruction process. A set of quantitative and qualitative experiments were carried out to validate the proposed method. The method has been implemented and tested on real data, and has been found to be effective at reconstructing noisy point clouds obtained using low-cost 3D sensors.
机译:随着低成本3D传感器和3D打印机的出现,场景和对象3D表面重建已成为近年来的重要研究课题。在这项工作中,我们提出了一种自动(无监督)方法,用于从使用低成本3D传感器获取的原始无组织点云中进行3D表面重建。我们已经修改了不断增长的神经网络,因为它具有灵活性,快速适应性和出色的表示质量,因此是一个合适的模型,可以对不同的现实对象和场景进行3D表面重建。在学习阶段考虑输入数据的颜色和表面法线信息并创建完整的三角形网格而不是基本的线框表示形式,对原始算法进行了一些改进。所提出的方法能够成功地在线创建3D人脸,而基于自组织图的现有3​​D重建方法则需要后期处理步骤,以弥补3D重建过程中产生的间隙和孔洞。进行了一组定量和定性实验以验证该方法。该方法已在实际数据上实施和测试,并且已发现可有效重构使用低成本3D传感器获得的噪声点云。

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