Xinjun Zhu, Zhizhi Zhang, Linpeng Hou, Limei Song, Hongyi Wang
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引用次数: 1
摘要
光场结构光三维测量融合了光场和结构光两种方法的优点,得到了广泛的应用。生成光场结构光数据集是研究光场三维重建算法的必要条件,但实际意义上的光场结构光数据集既耗时又昂贵,特别是对于地真数据集更是如此。本文提出了一种利用Blender模拟生成光场结构光投影数据的方法。所提出的方法允许修改相机和投影仪的设置和参数,以及旋转对象。该方法生成的数据集包含107730张光场结构光图像。通过9×9光场相机阵列提供包含深度和视差的标签数据(ground truth data),用于三维重建算法的性能评估。据我们所知,这是光场结构光投影环境中的第一个公开数据集。不同的三维重建方法,包括深度学习方法,被用来评估提出的数据生成方法和数据集。该数据集可在https://github.com/sabaizzz/Light-field-structured-light-dataset上获得。
Light field structured light projection data generation with Blender
Light field structured light 3D measurement has gained popularity by merging the advantages of light field and structured light methods. Generating light field structured light dataset is necessary for studying light field 3D reconstruction algorithms, but it is time-consuming and expensive in a real sense, especially for ground truth data. This paper proposes a method to generate light field structured light projection data with Blender simulation. The proposed method allows for the modification of camera and projector settings and parameters, as well as rotating objects. The dataset generated by this method contains 107730 light field structured light images. The label data (ground truth data) including depth and disparity by the 9×9 light field camera array are provided for the performance evaluation of 3D reconstruction algorithms. To the best of our knowledge, it is the first public dataset in the light field structured light projection environment. Diverse 3D reconstruction methods, including deep learning methods, are used to evaluate the proposed data generation method and dataset. The dataset is available at https://github.com/sabaizzz/Light-field-structured-light-dataset.