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New Definition of Quality-Scale Robustness for Image Processing Algorithms, with Generalized Uncertainty Modeling, Applied to Denoising and Segmentation

机译:具有广义不确定性建模的图像处理算法的质量规模鲁棒性的新定义,适用于去噪和分割

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Robustness is an important concern in machine learning and pattern recognition, and has attracted a lot of attention from technical and scientific viewpoints. Actually, the robustness models the capacity of a computerized approach to resist to perturbing phenomena and data uncertainties, and generate common artefact while designing algorithms. However, this question has not been dealt in depth in such a way for image processing tasks. In this article, we propose a novel definition of robustness dedicated to image processing algorithms. By considering a generalized model of image data uncertainty, we encompass the classic additive Gaussian noise alteration that we study through the evaluation of image denoising algorithms, but also more complex phenomena such as shape variability, which is considered for liver volume segmentation from medical images. Furthermore, we refine our evaluation of robustness wrt. our previous work by introducing a novel quality-scale definition. To do so, we calculate the worst loss of quality for a given algorithm over a set of uncertainty scales, together with the scale where this drop appears. This new approach permits to reveal any algorithm's weakness, and for which kind of corrupted data it may happen.
机译:稳健性是机器学习和模式识别的重要关注,并引起了技术和科学观点的大量关注。实际上,稳健性模拟了计算机化方法来抵抗扰动现象和数据不确定性的能力,并在设计算法的同时产生常见的艺术品。但是,此问题尚未以这样的方式对图像处理任务进行深入处理。在本文中,我们提出了专用于图像处理算法的鲁棒性的新颖定义。通过考虑图像数据不确定性的广义模型,我们包括通过评估图像去噪算法的经典添加剂高斯噪声改变,而是更复杂的现象,例如形状可变性,这被认为是从医学图像中进行肝脏体积分割。此外,我们改善了对鲁棒性的评价。我们以前的工作通过引入新颖的质量规范定义。为此,我们计算给定算法在一组不确定性尺度上的最糟糕的质量损失,以及出现此丢弃的刻度。这种新方法许可允许揭示任何算法的弱点,并且可能发生这种损坏的数据。

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