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Robust Temporally Coherent Laplacian Protrusion Segmentation of 3D Articulated Bodies

机译:3D关节体的鲁棒的临时相干拉普拉斯凸面分割

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In motion analysis and understanding it is important to be able to fit a suitable model or structure to the temporal series of observed data, in order to describe motion patterns in a compact way, and to discriminate between them. In an unsupervised context, i.e., no prior model of the moving object(s) is available, such a structure has to be learned from the data in a bottom-up fashion. In recent times, volumetric approaches in which the motion is captured from a number of cameras and a voxel-set representation of the body is built from the camera views, have gained ground due to attractive features such as inherent view-invariance and robustness to occlusions. Automatic, unsupervised segmentation of moving bodies along entire sequences, in a temporally-coherent and robust way, has the potential to provide a means of constructing a bottom-up model of the moving body, and track motion cues that may be later exploited for motion classification. Spectral methods such as locally linear embedding can be useful in this context, as they preserve "protrusions", i.e., high-curvature regions of the 3D volume, of articulated shapes, while improving their separation in a lower dimensional space, making them in this way easier to cluster. In this paper we therefore propose a spectral approach to unsupervised and temporally-coherent body-protrusion segmentation along time sequences. Volumetric shapes are clustered in an embedding space, clusters are propagated in time to ensure coherence, and merged or split to accommodate changes in the body's topology. Experiments on both synthetic and real sequences of dense voxel-set data are shown. This supports the ability of the proposed method to cluster body-parts consistently over time in a totally unsupervised fashion, its robustness to sampling density and shape quality, and its potential for bottom-up model construction.
机译:在运动分析和理解中,重要的是能够使合适的模型或结构适合于观察到的数据的时间序列,以便以紧凑的方式描述运动模式并在它们之间进行区分。在无监督的情况下,即没有一个或多个运动对象的先前模型可用,这种结构必须以自下而上的方式从数据中学习。近年来,由于具有吸引人的功能(例如固有的视图不变性和对遮挡的鲁棒性),从多种摄​​像机捕获运动并从摄像机视图构建人体的体素集表示的体积方法已获得了发展。 。以时间上连贯且健壮的方式在整个序列上对运动物体进行自动,无监督的分割,有可能提供一种构建运动物体自下而上模型的方法,并跟踪运动线索,以后可将其用于运动分类。在这种情况下,诸如局部线性嵌入之类的光谱方法可能会很有用,因为它们保留了“突起”(即3D体积的高曲率区域)的铰接形状,同时改善了它们在较低维空间中的分离度,使其在这种情况下集群更容易。因此,在本文中,我们提出了一种沿时间序列进行无监督且时间相关的身体突出分割的频谱方法。体积形状聚集在一个嵌入空间中,聚集会及时传播以确保一致性,然后合并或拆分以适应人体拓扑结构的变化。显示了密集体素集数据的合成序列和真实序列的实验。这支持了所提出的方法以完全不受监督的方式随时间推移一致地对身体部位进行聚类的能力,对采样密度和形状质量的鲁棒性以及自下而上模型构建的潜力。

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