首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >Classification methods of a small sample target object in the sky based on the higher layer visualizing feature and transfer learning deep networks
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Classification methods of a small sample target object in the sky based on the higher layer visualizing feature and transfer learning deep networks

机译:基于较高层可视化特征的天空中小样本目标对象的分类方法和转移学习深网络

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The effective classification methods of the small target objects in the no-fly zone are of great significance to ensure safety in the no-fly zone. But, due to the differences of the color and texture for the small target objects in the sky, this may be unobvious, such as the birds, unmanned aerial vehicles (UAVs), and kites. In this paper, we introduced the higher layer visualizing feature extraction method based on the hybrid deep network model to obtain the higher layer feature through combining the Sparse Autoencoder (SAE) model, the Convolutional Neural Network (CNN) model, and the regression classifier model to classify the different types of the target object images. In addition, because the sample numbers of the small sample target objects in the sky may be not sufficient, we cannot obtain much more local features directly to realize the classification of the target objects based on the higher layer visualizing feature extraction; we introduced the transfer learning in the SAE model to gain the cross-domain higher layer local visualizing features and sent the cross-domain higher layer local visualizing features and the images of the target-domain small sample object images into the CNN model, to acquire the global visualizing features of the target objects. Experimental results have shown that the higher layer visualizing feature extraction and the transfer learning deep networks are effective for the classification of small sample target objects in the sky.
机译:No-Fly区中的小目标物体的有效分类方法具有重要意义,以确保在无飞区域中的安全性。但是,由于天空中小目标物体的颜色和质地的差异,这可能是哀叹的,例如鸟类,无人驾驶飞行器(无人机)和风筝。本文介绍了基于混合深网络模型的较高层可视化特征提取方法,通过组合稀疏自动化器(SAE)模型,卷积神经网络(CNN)模型和回归分类器模型来获得更高层特征分类目标对象图像的不同类型。另外,由于天空中的小样本目标对象的样本数量不足,因此我们不能直接获得更多本地特征来基于更高层可视化特征提取来实现目标对象的分类;我们在SAE模型中引入了转移学习,以获得跨域更高层本地可视化功能,并将跨域更高层本地可视化功能和目标域小样本对象图像的图像发送到CNN模型中,以获取全局可视化目标对象的功能。实验结果表明,较高层可视化特征提取和转移学习深度网络对于天空中的小样本目标物体的分类是有效的。

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