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Using Colour to Model Outliers

机译:使用颜色为离群值建模

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摘要

Computer vision applications are able to model and reconstruct three dimensional scenes from several pictures. In this work, we are interested in the group of algorithm that register each image with respect to the model and aim at constructing a model of the scene. At the lowest level, most of these algorithms are comparing the pixel values of the image to the ones predicted by the model to refine the result. As research advances, the models are getting better and better, but no matter how complex they are, there will always be unpredictable situations that cannot be handled by the model. A recurring example is when an object appears in one image of the set, but in none of the others. The situation occurs, for example, when a moving entity crosses rapidly the field of view of the camera. In this work, we study the error generated by such an unexpected object at a pixel level and how colour can improve the estimation. We will derive the expected error distribution that this hypothetical object may cause. Our model is primarily intended as a basis for outlier removal in scene modelling algorithms. It gives a clear answer to whether, and with which confidence, a part of the image can be considered as part of the model or should be discarded, without using any dedicated thresholding scheme. The model is demonstrated on a trivial example where we match two images of a scene using a static camera. The example shows that the outlier distribution can be predicted by using the histograms of both images. We also show that by considering not only greyscale information, but also colour information, the outlier detection performance improves. We want to emphasise that the central part of this paper is the outlier modelling and not the outlier rejection scheme, which could be solved—for the trivial examples we are showing—by many other techniques.
机译:计算机视觉应用程序能够从几张图片中建模和重建三维场景。在这项工作中,我们对针对模型注册每个图像并旨在构建场景模型的一组算法感兴趣。在最低级别,这些算法中的大多数都将图像的像素值与模型预测的像素值进行比较,以优化结果。随着研究的发展,模型越来越好,但是无论模型多么复杂,总会有无法预测的情况无法由模型处理。一个重复的例子是当一个对象出现在集合的一个图像中,而没有一个出现在该图像中。例如,当移动的实体快速穿过相机的视场时,就会发生这种情况。在这项工作中,我们研究了此类意外对象在像素级别产生的误差,以及颜色如何改善估计。我们将推导出该假想对象可能引起的预期误差分布。我们的模型主要旨在作为场景建模算法中异常值去除的基础。它给出了一个清晰的答案,即是否可以在不使用任何专用阈值设置方案的情况下将图像的一部分视为模型的一部分,以及应该以哪个置信度作为模型的一部分或应该丢弃。在一个简单的示例中演示了该模型,在该示例中,我们使用静态相机匹配了场景的两个图像。该示例显示可以通过使用两个图像的直方图来预测离群值分布。我们还表明,通过不仅考虑灰度信息,还考虑颜色信息,可以提高异常值检测性能。我们想强调的是,本文的中心部分是离群值建模,而不是离群值拒绝方案,对于许多示例,我们可以通过许多其他方法来解决。

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