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Open Set Semantic Segmentation With Statistical Test And Adaptive Threshold

机译:具有统计检验和自适应阈值的开放集语义分割

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Semantic segmentation in the open world is prerequisite when deploying a well-trained segmentation model in real scenarios, where objects of unseen classes during model training may often appear in future new images to be segmented by the model. However, such open set semantic segmentation task has been rarely explored before. In this study, making use of the large number of pixel-level prediction uncertainties for each image, we proposed applying the non-parametric statistical test to detect whether objects of unseen classes appear in a new image, and an adaptive threshold method to automatically segment each pixel into either one of the known classes or the unknown class. Experiments on the natural image dataset showed that the proposed method significantly outperforms multiple strong baseline methods.
机译:在真实场景中部署训练有素的分割模型时,在开放世界中进行语义分割是前提条件,在这种情况下,模型训练期间看不见的类的对象可能经常出现在将来要被模型分割的新图像中。然而,这种开放集语义分割任务以前很少被探索。在这项研究中,我们利用每个图像的大量像素级预测不确定性,提出了应用非参数统计检验来检测新图像中是否出现看不见类别的对象的方法,以及自适应阈值方法来自动进行分割每个像素分为已知类或未知类之一。在自然图像数据集上进行的实验表明,该方法明显优于多种强基准方法。

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