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Built-in Foreground/Background Prior for Weakly-Supervised Semantic Segmentation

机译:内置前景/背景先验,用于弱监督的语义分割

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Pixel-level annotations are expensive and time consuming to obtain. Hence, weak supervision using only image tags could have a significant impact in semantic segmentation. Recently, CNN-based methods have proposed to fine-tune pre-trained networks using image tags. Without additional information, this leads to poor localization accuracy. This problem, however, was alleviated by making use of objectness priors to generate foreground/background masks. Unfortunately these priors either require training pixel-level annotations/bounding boxes, or still yield inaccurate object boundaries. Here, we propose a novel method to extract markedly more accurate masks from the pre-trained network itself, forgoing external objectness modules. This is accomplished using the activations of the higher-level convolutional layers, smoothed by a dense CRF. We demonstrate that our method, based on these masks and a weakly-supervised loss, outperforms the state-of-the-art tag-based weakly-supervised semantic segmentation techniques. Furthermore, we introduce a new form of inexpensive weak supervision yielding an additional accuracy boost.
机译:像素级注释的获取昂贵且耗时。因此,仅使用图像标签的弱监督可能会对语义分割产生重大影响。最近,基于CNN的方法已提出使用图像标签微调预训练网络。没有附加信息,这将导致定位精度下降。但是,通过使用客观先验来生成前景/背景蒙版,可以缓解此问题。不幸的是,这些先验条件要么需要训练像素级注释/边界框,要么仍然会产生不正确的对象边界。在这里,我们提出了一种新颖的方法,可以从预先训练的网络本身中提取明显更准确的蒙版,而无需使用外部对象模块。这是通过激活较高级别的卷积层(通过密集的CRF进行平滑处理)来完成的。我们证明,基于这些掩码和弱监督的损失,我们的方法优于基于最新标记的弱监督语义分割技术。此外,我们引入了一种廉价的弱监督的新形式,可进一步提高准确性。

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