A Multi-Task Mean Teacher for Semi-Supervised Shadow Detection

Zhihao Chen, Lei Zhu, Liang Wan, Song Wang, Wei Feng, P. Heng
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引用次数: 83

Abstract

Existing shadow detection methods suffer from an intrinsic limitation in relying on limited labeled datasets, and they may produce poor results in some complicated situations. To boost the shadow detection performance, this paper presents a multi-task mean teacher model for semi-supervised shadow detection by leveraging unlabeled data and exploring the learning of multiple information of shadows simultaneously. To be specific, we first build a multi-task baseline model to simultaneously detect shadow regions, shadow edges, and shadow count by leveraging their complementary information and assign this baseline model to the student and teacher network. After that, we encourage the predictions of the three tasks from the student and teacher networks to be consistent for computing a consistency loss on unlabeled data, which is then added to the supervised loss on the labeled data from the predictions of the multi-task baseline model. Experimental results on three widely-used benchmark datasets show that our method consistently outperforms all the compared state-of- the-art methods, which verifies that the proposed network can effectively leverage additional unlabeled data to boost the shadow detection performance.
半监督阴影检测的多任务均值教师
现有的阴影检测方法存在固有的局限性,依赖于有限的标记数据集,在一些复杂的情况下可能会产生较差的结果。为了提高阴影检测的性能,本文提出了一种多任务平均教师模型用于半监督阴影检测,该模型利用未标记数据,同时探索对阴影多个信息的学习。具体来说,我们首先构建了一个多任务基线模型,利用它们的互补信息同时检测阴影区域、阴影边缘和阴影计数,并将该基线模型分配给学生和教师网络。之后,我们鼓励来自学生和教师网络的三个任务的预测一致,以计算未标记数据上的一致性损失,然后将其添加到来自多任务基线模型预测的标记数据上的监督损失中。在三个广泛使用的基准数据集上的实验结果表明,我们的方法始终优于所有比较的最先进的方法,这验证了所提出的网络可以有效地利用额外的未标记数据来提高阴影检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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