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Estimating mechanical properties of cloth from videos using dense motion trajectories: Human psychophysics and machine learning

机译:使用密集运动轨迹从视频估计布料的机械性能:人类心理物理学和机器学习

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Humans can visually estimate the mechanical properties of deformable objects (e.g., cloth stiffness). While much of the recent work on material perception has focused on static image cues (e.g., textures and shape), little is known about whether humans can integrate information over time to make a judgment. Here we investigated the effect of spatiotemporal information across multiple frames (multiframe motion) on estimating the bending stiffness of cloth. Using high-fidelity cloth animations, we first examined how the perceived bending stiffness changed as a function of the physical bending stiffness defined in the simulation model. Using maximum-likelihood difference-scaling methods, we found that the perceived stiffness and physical bending stiffness were highly correlated. A second experiment in which we scrambled the frame sequences diminished this correlation. This suggests that multiframe motion plays an important role. To provide further evidence for this finding, we extracted dense motion trajectories from the videos across 15 consecutive frames and used the trajectory descriptors to train a machine-learning model with the measured perceptual scales. The model can predict human perceptual scales in new videos with varied winds, optical properties of cloth, and scene setups. When the correct multiframe was removed (using either scrambled videos or two-frame optical flow to train the model), the predictions significantly worsened. Our findings demonstrate that multiframe motion information is important for both humans and machines to estimate the mechanical properties. In addition, we show that dense motion trajectories are effective features to build a successful automatic cloth-estimation system.
机译:人类可以从视觉上估计可变形物体的机械性能(例如,布料的硬度)。尽管有关物质感知的最新工作主要集中在静态图像线索(例如纹理和形状)上,但人们是否能随时间整合信息来做出判断知之甚少。在这里,我们研究了跨多个帧(多帧运动)的时空信息对估计布料抗弯刚度的影响。我们使用高逼真度的布料动画,首先检查了感知到的弯曲刚度如何随模拟模型中定义的物理弯曲刚度而变化。使用最大似然差标度方法,我们发现感知的刚度和物理弯曲刚度高度相关。我们在第二个实验中对帧序列进行了加扰,从而减少了这种相关性。这表明多帧运动起着重要作用。为了为这一发现提供进一步的证据,我们从15个连续帧的视频中提取了密集运动轨迹,并使用轨迹描述符来训练具有测得的感知尺度的机器学习模型。该模型可以预测新视频中的人类感知比例,这些视频具有不同的风,布料的光学特性和场景设置。当删除正确的多帧(使用加扰的视频或两帧光流训练模型)时,预测会大大恶化。我们的发现表明,多帧运动信息对于人和机器评估机械性能都非常重要。此外,我们证明了密集运动轨迹是构建成功的自动布料估算系统的有效功能。

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