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Designing deep CNN models based on sparse coding for aerial imagery: a deep-features reduction approach

机译:基于空中图像稀疏编码的深层CNN模型:深度特征减少方法

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Traditional methods focus on low-level?handcrafted features representations and it is difficult to design a?comprehensive classification algorithm for remote sensing scene classification problems. Recently, convolutional neural networks (CNNs) have obtained remarkable performance outcomes, setting several remote sensing benchmarks. Furthermore, direct applications of UAV remote sensing images that use deep convolutional networks are extremely challenging given high input data dimensionality with relatively small amounts of available labelled data. We, therefore, propose a?CNN approach to scene classification that architecturally incorporates sparse coding (SC) technique for dimension reduction to minimize overfitting. Outcomes were compared with principal component analysis (PCA) and global average pooling (GAP) alternatives that use fully connected layer(s) in pre-trained?CNN architecture(s) to minimize overfitting. SC was used to encode deep features extracted from the last convolutional layer of pre-trained?CNN models by using different features maps in which deep features had been converted into low-dimensional?SC features. These same sparse-coded?features were concatenated by means of different pooling techniques to obtain global image features for scene classification. The proposed algorithm outperformed current state-of-the-art?algorithms based on handcrafted features. When using our own UAV-based?dataset and existing datasets, it was also exceptionally efficient computationally when learning data representations, producing?a?93.64% accuracy rate..
机译:传统方法侧重于低级?手工制作的功能表示,很难设计一个遥感场景分类问题的全面分类算法。最近,卷积神经网络(CNNS)获得了显着的性能结果,设置了几个遥感基准。此外,使用深度卷积网络的UAV遥感图像的直接应用非常具有挑战性,具有相对少量可用的标记数据的高输入数据维度。因此,我们提出了一种方法来实现场景分类的方法,以实现宽度减少的稀疏编码(SC)技术以最小化过度拟合。结果与主要成分分析(PCA)和全局平均池(GAP)替代品进行了比较,该替代在预训练的CNN架构中使用完全连接的层,以最大限度地减少过度拟合。 SC用于编码从预培训的预训练的最后卷积层提取的深度特征,通过使用不同的特征图,其中深度特征已被转换为低维度的映射。这些相同的稀疏编码?通过不同的池技术连接的特征,以获得场景分类的全局图像特征。该算法基于手工特征的当前最先进的算法优于最新的算法。使用我们自己的UV基于UV的数据集和现有数据集时,在学习数据表示时,它也在计算上的特殊高效,产生?a?93.64%的准确率..

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