基于主动半监督表示学习的语义分割

Aneesh Rangnekar, Christopher Kanan, Matthew Hoffman
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引用次数: 0

摘要

获取用于语义分割的人类逐像素标签是非常费力的,通常使标记数据集的构建非常昂贵。在这里,我们努力用一种结合了半监督和主动学习的新算法来克服这个问题,从而能够用更少的标记数据训练有效的语义分割算法。为了做到这一点,我们扩展了先前最先进的S4AL算法,用一种改进带有噪声标签的学习的自训练方法取代其用于半监督学习的平均教师方法。我们通过添加一个对比学习头进一步提高了神经网络查询有用数据的能力,这可以更好地理解场景中的对象,从而更好地查询主动学习。我们在CamVid和cityscape数据集上评估了我们的方法,这些数据集是语义分割主动学习的实际标准。我们在CamVid和cityscape数据集上实现了超过95%的网络性能,分别只利用了12.1%和15.1%的标记数据。我们还在cityscape数据集上对现有的独立半监督学习方法进行了基准测试,并在没有任何附加功能的情况下获得了卓越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic Segmentation with Active Semi-Supervised Representation Learning
Obtaining human per-pixel labels for semantic segmentation is incredibly laborious, often making labeled dataset construction prohibitively expensive. Here, we endeavor to overcome this problem with a novel algorithm that combines semi-supervised and active learning, resulting in the ability to train an effective semantic segmentation algorithm with significantly lesser labeled data. To do this, we extend the prior state-of-the-art S4AL algorithm by replacing its mean teacher approach for semi-supervised learning with a self-training approach that improves learning with noisy labels. We further boost the neural network's ability to query useful data by adding a contrastive learning head, which leads to better understanding of the objects in the scene, and hence, better queries for active learning. We evaluate our method on CamVid and CityScapes datasets, the de-facto standards for active learning for semantic segmentation. We achieve more than 95% of the network's performance on CamVid and CityScapes datasets, utilizing only 12.1% and 15.1% of the labeled data, respectively. We also benchmark our method across existing stand-alone semi-supervised learning methods on the CityScapes dataset and achieve superior performance without any bells or whistles.
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