边缘检测的累积网

Jingkuan Song, Zhilong Zhou, Lianli Gao, Xing Xu, Heng Tao Shen
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引用次数: 6

摘要

近年来,利用卷积神经网络(CNN)进行边缘检测取得了许多进展。由于在CNN中学习的分层表示的性质,利用更丰富的卷积特征来设计侧网络来改进边缘检测是直观的。然而,不同的侧网络是孤立的,最终结果通常是质量不均匀的侧输出的加权和。为了解决这些问题,我们提出了一个累积网络(C-Net),它基于当前的视觉特征和低水平的侧输出来累积学习侧网络,以逐渐去除详细或尖锐的边界,从而实现高分辨率和准确的边缘检测。因此,较低层次的边缘信息被累积继承,而多余的细节被逐步抛弃。事实上,在更高层次视觉特征的监督下,递归地学习从当前边缘地图中删除多余细节的位置是具有挑战性的。此外,我们还采用了亚光卷积(AC)和亚光卷积金字塔池(ASPP)来鲁棒地检测多尺度和高宽比下的物体边界。此外,通过我们设计的累积剩余注意(CRA)块,可以使用高级视觉信息和低级边缘图来累积精炼边缘。实验结果表明,我们的C-Net在两个基准数据集:BSDS500(即。819 ODS,。835 OIS和。862 AP)和NYUDV2(即。762 ODS,。781 OIS,。797 AP)上都创造了新的边缘检测记录。C-Net在其他基于深度学习的应用中具有很大的应用潜力,例如图像分类和分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cumulative Nets for Edge Detection
Lots of recent progress have been made by using Convolutional Neural Networks (CNN) for edge detection. Due to the nature of hierarchical representations learned in CNN, it is intuitive to design side networks utilizing the richer convolutional features to improve the edge detection. However, different side networks are isolated, and the final results are usually weighted sum of the side outputs with uneven qualities. To tackle these issues, we propose a Cumulative Network (C-Net), which learns the side network cumulatively based on current visual features and low-level side outputs, to gradually remove detailed or sharp boundaries to enable high-resolution and accurate edge detection. Therefore, the lower-level edge information is cumulatively inherited while the superfluous details are progressively abandoned. In fact, recursively Learningwhere to remove superfluous details from the current edge map with the supervision of a higher-level visual feature is challenging. Furthermore, we employ atrous convolution (AC) and atrous convolution pyramid pooling (ASPP) to robustly detect object boundaries at multiple scales and aspect ratios. Also, cumulatively refining edges using high-level visual information and lower-lever edge maps is achieved by our designed cumulative residual attention (CRA) block. Experimental results show that our C-Net sets new records for edge detection on both two benchmark datasets: BSDS500 (i.e., .819 ODS, .835 OIS and .862 AP) and NYUDV2 (i.e., .762 ODS, .781 OIS, .797 AP). C-Net has great potential to be applied to other deep learning based applications, e.g., image classification and segmentation.
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