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R-CASENet: A Multi-category Edge Detection Network

机译:R-CASENet:多类别边缘检测网络

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摘要

Edge detection plays an important role in image processing. With the development of deep learning, the accuracy of edge detection has been greatly improved, and people have more and more requirements for edge detection tasks. Most edge detection algorithms are binary edge detection methods, but there are usually multiple categories of edges in an image. In this paper, we present an accurate multi-category edge detection network Richer-CASENet (R-CASENet). In order to make full use of CNN's powerful feature expression capabilities, we attempt to use more information from feature map for edge feature extraction and classification. Using the ResNetlOl network as the backbone, firstly we merge the building blocks in different composite blocks and down-sample to obtain the feature map. Then we fuse the feature maps in different composite blocks to obtain the final fused classifier. Experiments show that we achieved better results on a public dataset.
机译:边缘检测在图像处理中起着重要的作用。随着深度学习的发展,边缘检测的准确性得到了极大的提高,人们对边缘检测任务的要求也越来越高。大多数边缘检测算法是二进制边缘检测方法,但是图像中通常有多种类型的边缘。在本文中,我们提出了一种准确的多类别边缘检测网络Richer-CASENet(R-CASENet)。为了充分利用CNN强大的特征表达功能,我们尝试使用来自特征图的更多信息进行边缘特征提取和分类。首先,以ResNet101网络为骨干,将构建块合并到不同的复合块中,并进行下采样以获得特征图。然后,我们将特征图融合到不同的合成块中,以获得最终的融合分类器。实验表明,我们在公共数据集上取得了更好的结果。

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