几何信息材料识别

Joseph DeGol, M. G. Fard, Derek Hoiem
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引用次数: 43

摘要

我们的目标是使用图像和几何信息来识别材料类别。在许多应用中,例如施工管理,可以使用粗糙的几何信息。我们研究了如何将3D几何(表面法线,相机内部和外部参数)与2D特征(纹理和颜色)一起使用,以改进材料分类。我们引入了一个新的数据集,GeoMat,它是第一个以以下形式提供图像和几何数据的数据集:(i)从每个材料类别的真实世界示例中以不同的尺度和视角提取的训练和测试补丁,以及(ii)一个大型建筑工地场景,包括160张图像和超过80万个手工标记的3D点。我们的研究结果表明,结合或单独使用二维和三维特征来建模材料,可以提高大规模建筑工地场景中材料斑块和图像在多个尺度和观看方向上的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geometry-Informed Material Recognition
Our goal is to recognize material categories using images and geometry information. In many applications, such as construction management, coarse geometry information is available. We investigate how 3D geometry (surface normals, camera intrinsic and extrinsic parameters) can be used with 2D features (texture and color) to improve material classification. We introduce a new dataset, GeoMat, which is the first to provide both image and geometry data in the form of: (i) training and testing patches that were extracted at different scales and perspectives from real world examples of each material category, and (ii) a large scale construction site scene that includes 160 images and over 800,000 hand labeled 3D points. Our results show that using 2D and 3D features both jointly and independently to model materials improves classification accuracy across multiple scales and viewing directions for both material patches and images of a large scale construction site scene.
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