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Discovering the Physical Parts of an Articulated Object Class from Multiple Videos

机译:从多个视频中发现关节对象类的物理部分

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We propose a motion-based method to discover the physical parts of an articulated object class (e.g. head/torso/leg of a horse) from multiple videos. The key is to find object regions that exhibit consistent motion relative to the rest of the object, across multiple videos. We can then learn a location model for the parts and segment them accurately in the individual videos using an energy function that also enforces temporal and spatial consistency in part motion. Unlike our approach, traditional methods for motion segmentation or non-rigid structure from motion operate on one video at a time. Hence they cannot discover a part unless it displays independent motion in that particular video. We evaluate our method on a new dataset of 32 videos of tigers and horses, where we significantly outperform a recent motion segmentation method on the task of part discovery (obtaining roughly twice the accuracy).
机译:我们提出了一种基于运动的方法来从多个视频中发现关节对象类的物理部分(例如马的头部/躯干/腿)。关键是要在多个视频中找到相对于其余物体表现出一致运动的物体区域。然后,我们可以学习零件的位置模型,并使用能量函数在各个视频中准确地对它们进行分段,该函数还可以在零件运动中实现时间和空间上的一致性。与我们的方法不同,用于运动分割或运动非刚性结构的传统方法一次只能在一个视频上运行。因此,除非该零件在该特定视频中显示独立的运动,否则他们无法发现该零件。我们在包含32个老虎和马的视频的新数据集上评估了我们的方法,在该数据集上,我们在零件发现任务上的性能明显优于最近的运动分割方法(获得了大约两倍的精度)。

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