In this article, we propose a method to design loss functions based on component trees which can be optimized by gradient descent algorithms and which are therefore usable in conjunction with recent machine learning approaches such as neural networks. We show how the altitudes associated to the nodes of such hierarchical image representations can be differentiated with respect to the image pixel values. This feature is used to design a generic loss function that can select or discard image maxima based on various attributes such as extinction values. The possibilities of the proposed method are demonstrated on simulated and real image filtering.
翻译:在本篇文章中,我们提出一种方法,根据可借助梯度下沉算法优化的成份树设计损失函数,因此,这些成份树可以与神经网络等最近的机器学习方法一起使用。我们展示了如何在图像像素值方面区分与这种等级图像显示节点相关的高度。这一特征用于设计一种基于诸如灭绝值等各种属性选择或丢弃图像格言的通用损失函数。在模拟和真实图像过滤中展示了拟议方法的可能性。