Multi-scale oriented object detection in aerial images based on convolutional neural networks with global attention

Jingjing Fei, Zhicheng Wang, Zhaohui Yu, Xi Gu, Gang Wei
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Abstract

Object detection is a fundamental yet challenging problem in natural scenes and aerial scenes. Although region based deep convolutional neural networks (CNNs) have brought impressive improvements for object detection in natural scenes, detecting oriented objects in aerial images still remains challenging, due to the complexity of the aerial image backgrounds and the large degree of freedom in scale, orientation, and density. To tackle these problems, we propose a novel network, composed of backbone structure with global attention module, multi-scale object proposal network and final oriented object detector, which can efficiently detect small objects, arbitrary direction objects, and dense objects in aerial images. We utilize pyramid pooling blocks as a global attention module on the top of the backbone structure to generate discriminative feature representations, which provide diverse context information and complementary receptive field for the detector. The global attention module can help the model reduce false alarms and incorrect classifications in the complex aerial image backgrounds. The multi-scale object proposal network aims to generate object-like regions at different scales through several intermediate layers. After that, these regions are sent to the detector for refined classification and regression, which can alleviate the problem of variant scales in aerial images. The oriented object detector is designed to generate predictions for inclined box. The quantitative comparison results on the challenging DOTA dataset show that our proposed method is more accurate than baseline algorithms and is effective for objection detection in aerial images. The results demonstrate that the proposed method significantly improves the performance.
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基于全局关注卷积神经网络的航空图像多尺度定向目标检测
在自然场景和航空场景中,目标检测是一个基本而又具有挑战性的问题。尽管基于区域的深度卷积神经网络(cnn)为自然场景中的目标检测带来了令人印象深刻的改进,但由于航空图像背景的复杂性以及在规模、方向和密度上的大自由度,航空图像中定向目标的检测仍然具有挑战性。为了解决这些问题,我们提出了一种新的网络,该网络由具有全局关注模块的骨干结构、多尺度目标建议网络和最终定向目标检测器组成,可以有效地检测航空图像中的小目标、任意方向目标和密集目标。我们利用金字塔池块作为骨干结构顶部的全局关注模块来生成判别特征表示,为检测器提供了不同的上下文信息和互补的接受野。全局关注模块可以帮助模型在复杂的航拍图像背景下减少误报和误分类。多尺度目标提议网络旨在通过多个中间层生成不同尺度的类目标区域。然后将这些区域发送给检测器进行精细分类和回归,可以缓解航拍图像中尺度变化的问题。定向目标检测器的设计目的是对斜箱进行预测。在具有挑战性的DOTA数据集上的定量对比结果表明,本文方法比基线算法更准确,能够有效地检测航空图像中的目标。结果表明,该方法显著提高了性能。
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