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Statistical models of visual shape and motion

机译:视觉形状和运动的统计模型

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摘要

The analysis of visual motion against dense background clutter is a challenging problem. Uncertainty in the positions of visually sensed features and ambiguity of feature correspondence call for a probabilistic treatment, capable of maintaining not simply a single estimate of position and shape, but an entire distribution. Exact representation of the evolving distribution is possible when the distributions are Gaussian, and this yields some powerful approaches. However, normal distributions are limited when clutter is present: because of their unimodality, they cannot be used to represent simultaneous alternative hypotheses. One powerful methodology for maintaining non-Gaussian distributions is based on random sampling techniques. The effectiveness of 'factored sampling' and 'Markov chain Monte Carlo' for interpretation of static images is widely accepted. More recently, factored sampling has been combined with learned dynamical models to propagate probability distributions for object position and shape. Progress in several areas is reported here. First a new observational model is described that takes object opacity into account. Secondly, complex shape models to represent combined rigid and non-rigid motion have been developed, together with a new algorithm to decompose rigid from non-rigid. Lastly, more powerful dynamical prior models have been constructed by appending suitable discrete labels to a continuous system state; this may also have applications to gesture recognition. [References: 48]
机译:针对密集背景杂乱的视觉运动分析是一个具有挑战性的问题。视觉感测特征的位置的不确定性和特征对应性的歧义要求进行概率处理,不仅要保持位置和形状的单一估计,还要保持整个分布。当分布是高斯分布时,可以精确表示演化的分布,这产生了一些有力的方法。但是,当出现混乱时,正态分布会受到限制:由于它们的单峰性,因此不能用于表示同时存在的替代假设。维持非高斯分布的一种有效方法是基于随机采样技术。 “因式采样”和“马尔可夫链蒙特卡洛”对静态图像解释的有效性已被广泛接受。最近,因子采样已与学习的动力学模型相结合,以传播对象位置和形状的概率分布。这里报告了几个领域的进展。首先,描述了一种新的观察模型,该模型考虑了对象的不透明度。其次,已经开发出了代表刚性和非刚性运动组合的复杂形状模型,以及一种将刚性与非刚性分解的新算法。最后,通过将合适的离散标签附加到连续的系统状态来构建功能更强大的动态先验模型;这可能也适用于手势识别。 [参考:48]

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