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Naive-Student: Leveraging Semi-Supervised Learning in Video Sequences for Urban Scene Segmentation

机译:天真的学生:利用城市场景分割视频序列中的半监督学习

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Supervised learning in large discriminative models is a mainstay for modern computer vision. Such an approach necessitates investing in large-scale human-annotated datasets for achieving state-of-the-art results. In turn, the efficacy of supervised learning may be limited by the size of the human annotated dataset. This limitation is particularly notable for image segmentation tasks, where the expense of human annotation is especially large, yet large amounts of unlabeled data may exist. In this work, we ask if we may leverage semi-supervised learning in unlabeled video sequences and extra images to improve the performance on urban scene segmentation, simultaneously tackling semantic, instance, and panoptic segmentation. The goal of this work is to avoid the construction of sophisticated, learned architectures specific to label propagation (e.g., patch matching and optical flow). Instead, we simply predict pseudo-labels for the unlabeled data and train subsequent models with both human-annotated and pseudo-labeled data. The procedure is iterated for several times. As a result, our Naive-Student model, trained with such simple yet effective iterative semi-supervised learning, attains state-of-the-art results at all three Cityscapes benchmarks, reaching the performance of 67.8% PQ, 42.6% AP, and 85.2% mIOU on the test set. We view this work as a notable step towards building a simple procedure to harness unlabeled video sequences and extra images to surpass state-of-the-art performance on core computer vision tasks.
机译:在大判别模型监督学习是现代计算机视觉的中流砥柱。这种方法在必要的大规模人类标注的数据集投资,为实现国家的最先进的成果。反过来,监督式学习的功效可以通过人类注释的数据集的大小的限制。这种限制是用于图像分割任务,其中人类注释的费用是特别大的,但大量的未标记数据的可能存在特别显着的。在这项工作中,我们要问,如果我们可以利用半监督在未标记的视频序列和额外的图像学习提高城市场景分割的性能,同时解决语义,实例和全景分割。这项工作的目的是为了避免复杂,学会架构特定于标签传播(例如,块匹配和光流)的结构。相反,我们只是预测伪标签的标签数据和培养后续机型与人类注解和伪标记的数据。该过程被重复数次。其结果是,我们的朴素学生模型,训练了与这种简单而有效的迭代半监督学习,国家的最先进的无所获结果在所有三个风情基准,达到67.8%PQ的性能,42.6%AP,并85.2%米欧的测试集。我们认为这项工作是朝着建立一个简单的程序来利用未标记的视频序列和额外的图像,超越于核心的计算机视觉任务的国家的最先进的性能有显着的一步。

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