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引用次数: 3

摘要

传统的语义分割方法在一个有监督的环境下工作,假设有固定数量的语义类别,并且需要足够大的训练集。各种方法的性能通常根据平均每像素类精度和最终标记的全局精度来报道。当将学习到的模型应用于大量未标记数据的实际设置时,可能包含以前未见过的类别,通过测量分类器的内省能力来适当地量化它们的性能是很重要的。我们通过使用所谓的陌生度度量来量化区域分类器在非参数k-近邻(k-NN)语义分割框架中的置信度。通过引入基于置信度的图像排序并在包含大量以前未见过的类别的数据集上显示其可行性来评估所提出的度量。
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Introspective semantic segmentation
Traditional approaches for semantic segmentation work in a supervised setting assuming a fixed number of semantic categories and require sufficiently large training sets. The performance of various approaches is often reported in terms of average per pixel class accuracy and global accuracy of the final labeling. When applying the learned models in the practical settings on large amounts of unlabeled data, possibly containing previously unseen categories, it is important to properly quantify their performance by measuring a classifier's introspective capability. We quantify the confidence of the region classifiers in the context of a non-parametric k-nearest neighbor (k-NN) framework for semantic segmentation by using the so called strangeness measure. The proposed measure is evaluated by introducing confidence based image ranking and showing its feasibility on a dataset containing a large number of previously unseen categories.
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