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Weakly Supervised Image Semantic Segmentation Based on Clustering Superpixels

机译:基于聚类超像素的弱监督图像语义分割

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In this paper, we propose an image semantic segmentation model which is trained from image-level labeled images. The proposed model starts with superpixel segmenting, and features of the superpixels are extracted by trained CNN. We introduce a superpixel-based graph followed by applying the graph partition method to group correlated superpixels into clusters. For the acquisition of inter-label correlations between the image-level labels in dataset, we not only utilize label co-occurrence statistics but also exploit visual contextual cues simultaneously. At last, we formulate the task of mapping appropriate image-level labels to the detected clusters as a problem of convex minimization. Experimental results on MSRC-21 dataset and LableMe dataset show that the proposed method has a better performance than most of the weakly supervised methods and is even comparable to fully supervised methods.
机译:在本文中,我们提出了一种图像语义分割模型,该模型从标记的图像级训练。所提出的模型以超顶链分割开始,并且通过训练的CNN提取超像性的特征。我们介绍基于SuperPixel的图表,然后将曲线图分区方法应用于将相关的超像素分组成簇。为了获取数据集中的图像级标签之间的标签间相关性,我们不仅利用标签共同发生统计信息,还可以同时利用可视上下文提示。最后,我们制定将适当的图像级标签映射到检测到的群集作为凸起最小化的问题。 MSRC-21数据集和LableMe数据集上的实验结果表明,该方法的性能比大多数弱监管方法更好,甚至与完全监督的方法相当。

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