Learning universal representations across different applications domain is an open research problem. In fact, finding universal architecture within the same application but across different types of datasets is still unsolved problem too, especially in applications involving processing 3D point clouds. In this work we experimentally test several state-of-the-art learning-based methods for 3D point cloud registration against the proposed non-learning baseline registration method. The proposed method either outperforms or achieves comparable results w.r.t. learning based methods. In addition, we propose a dataset on which learning based methods have a hard time to generalize. Our proposed method and dataset, along with the provided experiments, can be used in further research in studying effective solutions for universal representations. Our source code is available at: github.com/DavidBoja/greedy-grid-search.
翻译:在不同应用领域普遍学习是一个开放的研究问题。事实上,在同一应用领域但不同类型数据集中找到通用结构,这仍然是一个尚未解决的问题,特别是在涉及处理3D点云的应用程序中。在这项工作中,我们试验了与拟议的非学习基线登记方法相比,为3D点云登记试验了几种最先进的基于学习的方法。拟议的方法要么优于,要么取得类似的基于学习的结果。此外,我们提议了一个数据集,在这个数据集中,学习方法很难加以概括。我们提议的方法和数据集,连同所提供的实验,可以用于进一步研究研究通用表示的有效解决办法。我们的源代码可以在 gathub.com/DavidBoja/greedy-gridy-gridge-search-search查询中找到。