Detection of seals in remote sensing images using features extracted from deep convolutional neural networks

A. Salberg
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引用次数: 53

Abstract

In this paper, we propose an algorithm for automatic detection of seals in aerial remote sensing images using features extracted from a pre-trained deep convolutional neural network (CNN). The method consists of three stages: (i) Detection of potential objects, (ii) feature extraction and (iii) classification of potential objects. The first stage is application dependent, with the aim of detecting all seal pups in the image, with the expense of detecting a large amount of false objects. The second stage extracts generic image features from a local image corresponding to each potential seal detected in the first stage using a CNN trained on the ImageNet database. In the third stage we apply a linear support vector machine to classify the feature vectors extracted in the second stage. The proposed method was demonstrated to an aerial image that contains 84 pups and 128 adult harp seals, and the results show that we are able to detect the seals with high accuracy (2.7% for the adults and 7.3% for the pups). We conclude that deep CNNs trained on the ImageNet database are well suited as a feature extraction module, and using a simple linear SVM, we were able to separate seals from other objects with very high accuracy. We believe that this methodology may be applied to other remote sensing object recognition tasks.
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基于深度卷积神经网络特征提取的遥感图像封印检测
在本文中,我们提出了一种利用预训练的深度卷积神经网络(CNN)提取特征来自动检测航空遥感图像中密封件的算法。该方法包括三个阶段:(i)潜在目标的检测,(ii)特征提取和(iii)潜在目标的分类。第一阶段依赖于应用程序,目的是检测图像中的所有海豹幼崽,代价是检测大量虚假物体。第二阶段使用ImageNet数据库训练的CNN,从对应于第一阶段检测到的每个潜在密封的局部图像中提取通用图像特征。在第三阶段,我们使用线性支持向量机对第二阶段提取的特征向量进行分类。在包含84只幼海豹和128只成年海豹的航拍图像上进行了验证,结果表明,该方法能够以较高的准确率(2.7%的成年海豹和7.3%的幼海豹)检测海豹。我们得出的结论是,在ImageNet数据库上训练的深度cnn非常适合作为特征提取模块,并且使用简单的线性支持向量机,我们能够以非常高的精度将印章从其他物体中分离出来。我们相信该方法可以应用于其他遥感目标识别任务。
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