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Digging Into Pseudo Label: A Low-Budget Approach for Semi-Supervised Semantic Segmentation

机译:挖掘伪标签:半监督语义细分的低预算方法

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摘要

The capability to understand visual scenes with limited labeled data has been widely concerned in the field of computer vision. Although semi-supervised learning for image classification has been extensively studied in some cases, semantic segmentation with limited data has only recently gained attention. In this work, we follow the standard semi-supervised segmentation pipeline for image classification and propose a two-branch network that can encode strong and pseudo label spaces respectively, extracting reliable supervision information from pseudo-labels to assist in training network with strong labels. Our method outperforms previous semi-supervised methods with limited annotation cost. On standard benchmark PASCAL VOC 2012 for semi-supervised semantic segmentation, the proposed approach gains fresh state-of-the-art performance.
机译:理解具有有限标记数据的视觉场景的能力已广泛关注计算机愿景领域。虽然在某些情况下已经广泛研究了半监督学习,但在某些情况下已经广泛研究了具有有限数据的语义细分,只能受到关注。在这项工作中,我们遵循标准的半监控分段管道进行图像分类,并提出了一个双分支网络,可以分别用于编码强和伪标签空间,从伪标签中提取可靠的监控信息,以协助具有强大标签的培训网络。我们的方法优于先前的半监督方法,具有有限的注释成本。在半监督语义分割的标准基准Pascal VOC 2012上,拟议的方法获得了新的最先进的性能。

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