基于旋转和尺度不变性的桥梁检测算法

Runlin Li, H. Zou, Shitian He, Xu Cao, Fei Cheng, Li Sun
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引用次数: 0

摘要

随着遥感技术和深度神经网络的发展,基于深度学习的高分辨率光学遥感影像桥目标检测已成为研究热点。桥梁目标检测具有方向任意、尺度多样、背景复杂等特点。针对遥感影像中桥梁目标的特点,提出了一种基于旋转和尺度不变性的桥梁目标检测算法。我们的方法在检测器网络的基础上进行了改进。针对不同尺度和多方向桥梁的难点,采用递归特征金字塔(RFP)提取尺度不变性特征,加入方向不变性模型(OIM)提取旋转不变性特征。此外,大多数桥梁数据集被标记为水平矩形,网络难以提取旋转不变性特征,桥梁的尺度特征也会被模糊。本文提出了一种基于弱监督学习方法Boxinst的旋转盒回归算法对标注进行变换。针对远程图像背景复杂,存在大量与桥梁形状相似的虚警,提出了一种云和负样本数据增强策略。本文提出的算法大大提高了复杂场景遥感图像中桥梁目标检测的精度,并在2020年高分辨率对地观测图像自动解译高芬挑战赛桥梁检测赛道初赛中以84.48%的地图率获得第二名。
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Bridge Detection Algorithm Based on Rotation and Scale Invariance
With the development of remote sensing technology and deep neural network, high-resolution optical remote sensing image bridge target detection based on deep learning has become a research hotspot. Bridge target detection is a great challenge because of its arbitrary direction, diverse scale and complex background. In view of the characteristics of bridge targets in remote sensing image, we propose a bridge target detection algorithm based on rotation and scale invariance. Our method is improved based on the DetectoRS network. Aiming at the difficulties of bridge with different scales and multi-directions, we use Recursive Feature Pyramid (RFP) to extract the scale invariant feature and add orientation-invariant model (OIM) to extract rotation invariant feature. In addition, most of the bridge dataset are labeled with horizontal rectangle, it is difficult for network to extract the rotation invariant feature, and the scale feature of bridge will also be blurred. In this paper, a rotated box regression algorithm based on Boxinst, a weakly supervised learning method, is proposed to transform the annotation. A cloud and negative sample data enhancement strategy is proposed since the background of remote images is complicated and there are a lot of false alarms with similar shapes as bridges. The algorithm we proposed in this paper has greatly improved the accuracy of bridge target detection in remote images with complex scenes, and achieved the second place in the preliminary competition in the bridge detection track of the 2020 Gaofen Challenge on the Automated High-Resolution Earth Observation Image Interpretation, with the map of 84.48%.
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