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ScribbleSup: Scribble-Supervised Convolutional Networks for Semantic Segmentation

机译:Scribbleup:语义分割的杂交监督卷积网络

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Large-scale data is of crucial importance for learning semantic segmentation models, but annotating per-pixel masks is a tedious and inefficient procedure. We note that for the topic of interactive image segmentation, scribbles are very widely used in academic research and commercial software, and are recognized as one of the most userfriendly ways of interacting. In this paper, we propose to use scribbles to annotate images, and develop an algorithm to train convolutional networks for semantic segmentation supervised by scribbles. Our algorithm is based on a graphical model that jointly propagates information from scribbles to unmarked pixels and learns network parameters. We present competitive object semantic segmentation results on the PASCAL VOC dataset by using scribbles as annotations. Scribbles are also favored for annotating stuff (e.g., water, sky, grass) that has no well-defined shape, and our method shows excellent results on the PASCALCONTEXT dataset thanks to extra inexpensive scribble annotations. Our scribble annotations on PASCAL VOC are available at http://research.microsoft.com/en-us/um/ people/jifdai/downloads/scribble_sup.
机译:大规模数据对于学习语义分割模型至关重要,但每个像素掩模注释是一种繁琐且低效的程序。我们注意到,对于交互式图像分割的主题,涂鸦非常广泛地用于学术研究和商业软件,并且被认为是最易于互动的方式之一。在本文中,我们建议使用涂鸦来注释图像,并开发一种算法来训练通过涂鸦监督的语义分割的卷积网络。我们的算法基于图形模型,该图形模型将来自划痕的信息共同传播到未标记的像素并学习网络参数。我们通过使用涂鸦作为注释,在Pascal VOC数据集上呈现竞争物对象语义分段结果。涂鸦也有利于没有明确定义形状的注释(例如,水,天空,草),并且由于额外的廉价涂鸦注释,我们的方法在PascalContext DataSet上显示出优异的结果。我们的涂鸦incallog in http://research.microsoft.com/en-us/um/ people / jifdai / downloads / scribble_sup提供。

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