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Learning Relaxed Deep Supervision for Better Edge Detection

机译:学习轻松的深度监督以更好地进行边缘检测

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We propose using relaxed deep supervision (RDS) within convolutional neural networks for edge detection. The conventional deep supervision utilizes the general groundtruth to guide intermediate predictions. Instead, we build hierarchical supervisory signals with additional relaxed labels to consider the diversities in deep neural networks. We begin by capturing the relaxed labels from simple detectors (e.g. Canny). Then we merge them with the general groundtruth to generate the RDS. Finally we employ the RDS to supervise the edge network following a coarse-to-fine paradigm. These relaxed labels can be seen as some false positives that are difficult to be classified. Weconsider these false positives in the supervision, and are able to achieve high performance for better edge detection. Wecompensate for the lack of training images by capturing coarse edge annotations from a large dataset of image segmentations to pretrain the model. Extensive experiments demonstrate that our approach achieves state-of-the-art performance on the well-known BSDS500 dataset (ODS F-score of .792) and obtains superior cross-dataset generalization results on NYUD dataset.
机译:我们建议在卷积神经网络中使用松弛深度监督(RDS)进行边缘检测。常规的深度监督利用一般的真实性来指导中间的预测。取而代之的是,我们构建带有附加宽松标签的分层监管信号,以考虑深度神经网络中的多样性。我们首先从简单的检测器(例如Canny)捕获轻松的标签。然后,我们将它们与一般的groundtruth合并以生成RDS。最后,我们采用RDS遵循从粗到精的范例来监督边缘网络。这些宽松的标签可以看作是一些难以分类的误报。我们在监督中考虑了这些误报,并能够实现高性能以更好地进行边缘检测。我们通过从大型图像分割数据集中捕获粗糙边缘注释来对模型进行预训练,从而弥补训练图像的不足。大量实验表明,我们的方法在著名的BSDS500数据集(ODS F评分为.792)上达到了最先进的性能,并在NYUD数据集上获得了出色的跨数据集泛化结果。

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