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Perceptually Inspired Layout-Aware Losses for Image Segmentation

机译:感知自发的图像分割的布局感知损失

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Interactive image segmentation is an important computer vision problem that has numerous real world applications. Models for image segmentation are generally trained to minimize the Hamming error in pixel labeling. The Hamming loss does not ensure that the topology/structure of the object being segmented is preserved and therefore is not a strong indicator of the quality of the segmentation as perceived by users. However, it is still ubiquitously used for training models because it decomposes over pixels and thus enables efficient learning. In this paper, we propose the use of a novel family of higher-order loss functions that encourage segmentations whose layout is similar to the ground-truth segmentation. Unlike the Hamming loss, these loss functions do not decompose over pixels and therefore cannot be directly used for loss-augmented inference. We show how our loss functions can be transformed to allow efficient learning and demonstrate the effectiveness of our method on a challenging segmentation dataset and validate the results using a user study. Our experimental results reveal that training with our layout-aware loss functions results in better segmentations that are preferred by users over segmentations obtained using conventional loss functions.
机译:交互式图像分割是一个重要的计算机视觉问题,具有许多真实的世界应用。通常培训图像分割模型,以最小化像素标记中的汉明误差。汉明损失不确保被保留的对象的拓扑/结构被保留,因此不是用户所感知的分割质量的强大指标。然而,它仍然普遍用于训练模型,因为它折叠在像素上,因此可以高效地学习。在本文中,我们提出了一种新颖的高阶损失函数,鼓励其布局与地面分割类似的分割。与汉明损失不同,这些损失功能不会分解像素上,因此不能直接用于丢失增强推断。我们展示了如何转换损失函数,以允许高效的学习,并演示我们对具有挑战性的分段数据集的方法的有效性,并使用用户学习验证结果。我们的实验结果表明,利用我们的布局感知损失函数的培训导致更好的分段,用户优选使用传统损失函数获得的分段。

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