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Imager Assessment by Classification of Geometric Primitives

机译:通过几何基元分类进行成像仪评估

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A large variety of image quality metrics has been proposed within the last decades. The majority of these metrics has been investigated only for single image degradations like noise, blur and compression on limited sets of domain-specific images. For assessing imager performance, however, a task-specific evaluation of captured imagers with user-defined content seems, in general, more appropriate than using such metrics. This paper presents an approach to image quality assessment of camera data by comparison of classification rates of models individually trained to solve simple classification tasks on images containing single geometric primitives. Examples of considered tasks are triangle orientation discrimination or the determination of number of line pairs for bar targets. In order to make models more robust against image degradations typically occurring in real cameras, data augmentation is applied on pristine imagery of geometric primitives in the training phase. Pristine imagery is impaired by a variety of simulated image degradations, e.g. Gaussian noise, salt and pepper noise for defective pixels, Gaussian and motion blur, perspective image distortion. The trained models are then applied to real camera images and classification rates are calculated for geometric primitives of different sizes, contrasts and center positions. For task-related performance ranking, these classification rates could be compared for multiple cameras or camera settings. An advantage of this approach is that the amount of training data is practically inexhaustible due to artificial imagery and applied image degradations, which makes it easy to counteract model overfitting by increasing the number of considered realizations of image degradations applied to the imagery and hence increasing the variability of training data.
机译:在过去的几十年中,已经提出了各种各样的图像质量指标。这些指标中的大多数仅针对单个图像降级(如噪声,模糊和压缩)在特定领域的有限图像上进行了研究。但是,为了评估成像仪性能,通常,使用用户定义的内容对捕获的成像仪进行任务特定的评估似乎比使用此类指标更合适。本文通过比较经过单独训练以解决包含单个几何图元的图像上的简单分类任务的模型的分类率,提出了一种评估相机数据的图像质量的方法。所考虑任务的示例是三角形方向判别或确定条形目标的线对数量。为了使模型对在实际相机中通常发生的图像质量下降更为鲁棒,在训练阶段将数据增强应用于几何图元的原始图像。原始的影像会受到各种模拟影像退化的影响,例如高斯噪声,盐和胡椒噪声(用于缺陷像素),高斯和运动模糊,透视图图像失真。然后将训练后的模型应用于真实的相机图像,并为不同大小,对比度和中心位置的几何图元计算分类率。对于与任务相关的性能排名,可以将这些分类率针对多个摄像机或摄像机设置进行比较。这种方法的优点是,由于人工图像和应用的图像退化,训练数据的数量实际上是不竭的,这使得通过增加考虑的应用于图像的图像退化的实现数量,从而增加模型的适应性,可以很容易地抵消模型的过度拟合。训练数据的可变性。

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