从视频中估计织物的材料性能

K. Bouman, Bei Xiao, P. Battaglia, W. Freeman
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引用次数: 88

摘要

被动地估计在自然环境中移动的可变形物体的内在材料特性对于场景理解至关重要。我们提出了一个框架来自动分析织物在各种未知风力下运动的视频,并恢复织物的两个关键材料特性:刚度和面积重量。我们扩展了先前开发的功能,以紧凑地表示静态图像纹理,以描述视频纹理,例如织物运动。然后使用判别训练的回归模型从这些特征中预测织物的物理特性。我们的模型的成功在一个新的,公开可用的织物视频数据库上得到了证明,该数据库具有相应的测量的地面真值材料属性。我们表明,我们的预测与织物的刚度和密度的地面真实测量结果很好地相关。我们的贡献包括:(a)可用于训练和测试算法的数据库,用于被动地从视频中预测织物性能,(b)从视频中预测织物材料性能的算法,以及(c)对人类从视频和图像中估计织物材料性能的能力的感知研究。
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Estimating the Material Properties of Fabric from Video
Passively estimating the intrinsic material properties of deformable objects moving in a natural environment is essential for scene understanding. We present a framework to automatically analyze videos of fabrics moving under various unknown wind forces, and recover two key material properties of the fabric: stiffness and area weight. We extend features previously developed to compactly represent static image textures to describe video textures, such as fabric motion. A discriminatively trained regression model is then used to predict the physical properties of fabric from these features. The success of our model is demonstrated on a new, publicly available database of fabric videos with corresponding measured ground truth material properties. We show that our predictions are well correlated with ground truth measurements of stiffness and density for the fabrics. Our contributions include: (a) a database that can be used for training and testing algorithms for passively predicting fabric properties from video, (b) an algorithm for predicting the material properties of fabric from a video, and (c) a perceptual study of humans' ability to estimate the material properties of fabric from videos and images.
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