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A study on local photometric models and their application to robust tracking

机译:局部光度模型及其在鲁棒跟踪中的应用研究

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摘要

Since modeling reflections in image processing is a difficult task, most computer vision algorithms assume that objects are Lambertian and that no lighting change occurs. Some photometric models can partly answer this issue by assuming that the lighting changes are the same at each point of a small window of interest. Through a study based on specular reflection models, we explicit the assumptions on which these models are implicitly based and the situations in which they could fail. This paper proposes two photometric models, which compensate for specular highlights and lighting variations. They assume that photometric changes vary smoothly on the window of interest. Contrary to classical models, the characteristics of the object surface and the lighting changes can vary in the area being observed. First, we study the validity of these models with respect to the acquisition setup: relative locations between the light source, the sensor and the object as well as the roughness of the surface. Then, these models are used to improve feature points tracking by simultaneously estimating the photometric and geometric changes. The proposed methods are compared to well-known tracking methods robust to affine photometric changes. Experimental results on specular objects demonstrate the robustness of our approaches to specular highlights and lighting changes.
机译:由于在图像处理中对反射进行建模是一项艰巨的任务,因此大多数计算机视觉算法都假定对象是朗伯型的,并且不会发生照明变化。某些光度模型可以通过假设在一个感兴趣的小窗口的每个点处的照明变化相同来部分解决此问题。通过基于镜面反射模型的研究,我们明确隐含了这些模型所基于的假设以及它们可能失败的情况。本文提出了两种光度学模型,它们可以补偿镜面高光和照明变化。他们假设光度变化在目标窗口上平滑变化。与经典模型相反,对象表面的特性和照明变化可能会在观察区域中发生变化。首先,我们研究这些模型相对于采集设置的有效性:光源,传感器和物体之间的相对位置以及表面的粗糙度。然后,这些模型用于通过同时估计光度和几何变化来改进特征点跟踪。将提出的方法与对仿射光度变化具有鲁棒性的众所周知的跟踪方法进行比较。在镜面物体上的实验结果证明了我们处理镜面高光和照明变化的方法的鲁棒性。

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