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A Robust Monocular 3D Object Tracking Method Combining Statistical and Photometric Constraints

机译:一种统计和光度约束的强大单目3D对象跟踪方法

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摘要

Both region-based methods and direct methods have become popular in recent years for tracking the 6-dof pose of an object from monocular video sequences. Region-based methods estimate the pose of the object by maximizing the discrimination between statistical foreground and background appearance models, while direct methods aim to minimize the photometric error through direct image alignment. In practice, region-based methods only care about the pixels within a narrow band of the object contour due to the level-set-based probabilistic formulation, leaving the foreground pixels beyond the evaluation band unused. On the other hand, direct methods only utilize the raw pixel information of the object, but ignore the statistical properties of foreground and background regions. In this paper, we find it beneficial to combine these two kinds of methods together. We construct a new probabilistic formulation for 3D object tracking by combining statistical constraints from region-based methods and photometric constraints from direct methods. In this way, we take advantage of both statistical property and raw pixel values of the image in a complementary manner. Moreover, in order to achieve better performance when tracking heterogeneous objects in complex scenes, we propose to increase the distinctiveness of foreground and background statistical models by partitioning the global foreground and background regions into a small number of sub-regions around the object contour. We demonstrate the effectiveness of the proposed novel strategies on a newly constructed real-world dataset containing different types of objects with ground-truth poses. Further experiments on several challenging public datasets also show that our method obtains competitive or even superior tracking results compared to previous works. In comparison with the recent state-of-art region-based method, the proposed hybrid method is proved to be more stable under silhouette pose ambiguities with a slightly lower
机译:近年来,基于地区的方法和直接方法都变得流行,用于跟踪来自单眼视频序列的6-DOF姿势。基于地区的方法通过最大化统计前景和背景外观模型之间的识别来估计对象的姿势,而直接方法旨在通过直接图像对准最小化光度误差。在实践中,由于基于水平设定的概率制定,基于区域的方法仅在物体轮廓的窄带内关注像素内的像素,使前景像素超出评估带未使用。另一方面,直接方法仅利用对象的原始像素信息,但忽略前景和背景区域的统计特性。在本文中,我们发现将这两种方法结合在一起有益。通过将基于区域的方法和直接方法的光度约束组合来构造一种新的概率制定,用于3D对象跟踪。以这种方式,我们以互补的方式利用图像的统计属性和原始像素值。此外,为了在复杂场景中跟踪异质对象时实现更好的性能,我们建议通过将全球前景和背景区域分配到对象轮廓周围的少量子区域中来增加前景和背景统计模型的独特性。我们展示了拟议的新颖策略对一个包含不同类型对象的新建立的真实数据集的效力。关于若干具有挑战性的公共数据集的进一步实验还表明,与以前的作品相比,我们的方法获得了竞争力甚至优越的跟踪结果。与最近的基于最先进的区域的方法相比,在剪影下,所提出的混合方法被证明是更稳定的造成削弱略低

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