3D Point Cloud for Objects and Scenes Classification, Recognition, Segmentation, and Reconstruction: A Review

O. Elharrouss, Kawther Hassine, Ayman A. Zayyan, Zakariyae Chatri, Noor Almaadeed, S. Al-Máadeed, K. Abualsaud
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引用次数: 1

Abstract

Three-dimensional (3D) point cloud analysis has become one of the attractive subjects in realistic imaging and machine visions due to its simplicity, flexibility and powerful capacity of visualization. Actually, the representation of scenes and buildings using 3D shapes and formats leveraged many applications among which automatic driving, scenes and objects reconstruction, etc. Nevertheless, working with this emerging type of data has been a challenging task for objects representation, scenes recognition, segmentation, and reconstruction. In this regard, a significant effort has recently been devoted to developing novel strategies, using different techniques such as deep learning models. To that end, we present in this paper a comprehensive review of existing tasks on 3D point cloud: a well-defined taxonomy of existing techniques is performed based on the nature of the adopted algorithms, application scenarios, and main objectives. Various tasks performed on 3D point could data are investigated, including objects and scenes detection, recognition, segmentation, and reconstruction. In addition, we introduce a list of used datasets, discuss respective evaluation metrics, and compare the performance of existing solutions to better inform the state-of-the-art and identify their limitations and strengths. Lastly, we elaborate on current challenges facing the subject of technology and future trends attracting considerable interest, which could be a starting point for upcoming research studies.
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三维点云用于物体和场景的分类、识别、分割和重建:综述
三维点云分析以其简单、灵活和强大的可视化能力,已成为现实成像和机器视觉领域的热门课题之一。实际上,使用3D形状和格式的场景和建筑物的表示涉及到许多应用,其中包括自动驾驶,场景和物体重建等。然而,处理这种新兴类型的数据对于对象表示、场景识别、分割和重建来说是一项具有挑战性的任务。在这方面,最近已经投入了大量的努力来开发新的策略,使用不同的技术,如深度学习模型。为此,我们在本文中对现有的3D点云任务进行了全面的回顾:根据采用的算法、应用场景和主要目标的性质,对现有技术进行了明确的分类。研究了在三维点数据上执行的各种任务,包括物体和场景的检测、识别、分割和重建。此外,我们还介绍了使用的数据集列表,讨论了各自的评估指标,并比较了现有解决方案的性能,以更好地了解最新技术,并确定其局限性和优势。最后,我们详细阐述了当前技术主题面临的挑战和未来趋势,吸引了相当大的兴趣,这可能是未来研究的起点。
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