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Augmented Feedback in Semantic Segmentation Under Image Level Supervision

机译:在图像级监管下的语义细分中的增强反馈

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Training neural networks for semantic segmentation is data hungry. Meanwhile annotating a large number of pixel-level segmentation masks needs enormous human effort. In this paper, we propose a framework with only image-level supervision. It unifies semantic segmentation and object localization with important proposal aggregation and selection modules. They greatly reduce the notorious error accumulation problem that commonly arises in weakly supervised learning. Our proposed training algorithm progressively improves segmentation performance with augmented feedback in iterations. Our method achieves decent results on the PASCAL VOC 2012 segmentation data, outperforming previous image-level supervised methods by a large margin.
机译:培训语义分割的神经网络是饥饿的数据。同时注释大量像素级分割面具需要巨大的人力努力。在本文中,我们提出了一个仅具有图像级监控的框架。它统一了与重要提案聚合和选择模块的语义分段和对象本地化。他们大大减少了弱势监督学习中常见的臭名昭着的误差累积问题。我们所提出的培训算法逐步提高分段性能,在迭代中的增强反馈。我们的方法在Pascal VOC 2012分段数据上实现了体面的结果,优先于较大的边距地表现出先前的图像级监督方法。

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