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Statistical Methods and Models for Video-Based Tracking, Modeling, and Recognition

机译:基于视频的跟踪,建模和识别的统计方法和模型

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Computer vision systems attempt to understand a scene and its components from mostly visual information. The geometry exhibited by the real world, the influence of material properties on scattering of incident light, and the process of imaging introduce constraints and properties that are key to interpreting scenes and recognizing objects, their structure and kinematics. In the presence of noisy observations and other uncertainties, computer vision algorithms make use of statistical methods for robust inference. In this monograph, we highlight the role of geometric constraints in statistical estimation methods, and how the interplay between geometry and statistics leads to the choice and design of algorithms for video-based tracking, modeling and recognition of objects. In particular, we illustrate the role of imaging, illumination,and motion constraints in classical vision problems such as tracking, structure from motion, metrology, activity analysis and recognition, and present appropriate statistical methods used in each of these problems.
机译:计算机视觉系统试图从大多数视觉信息中了解场景及其组成部分。现实世界展示的几何形状,材料特性对入射光散射的影响以及成像过程引入了约束和特性,这对于解释场景和识别对象,它们的结构和运动学至关重要。在存在嘈杂的观测结果和其他不确定性的情况下,计算机视觉算法会利用统计方法进行可靠的推断。在本专题中,我们重点介绍了几何约束在统计估计方法中的作用,以及几何与统计之间的相互作用如何导致基于视频的跟踪,建模和识别对象的算法的选择和设计。特别是,我们说明了成像,照明和运动约束在经典视觉问题(例如跟踪,运动结构,度量衡,活动分析和识别)中的作用,并提出了在每种问题中使用的适当统计方法。

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