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Fusion of shallow and deep features for classification of high-resolution remote sensing images

机译:高分辨率遥感图像分类的浅薄和深度特征的融合

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Effective spectral and spatial pixel description plays a significant role for the classification of high resolution remote sensing images. Current approaches of pixel-based feature extraction are of two main kinds: one includes the widely-used principal component analysis (PCA) and gray level co-occurrence matrix (GLCM) as the representative of the shallow spectral and shape features, and the other refers to the deep learning-based methods which employ deep neural networks and have made great promotion on classification accuracy. However, the former traditional features are insufficient to depict complex distribution of high resolution images, while the deep features demand plenty of samples to train the network otherwise over fitting easily occurs if only limited samples are involved in the training. In view of the above, we propose a GLCM-based convolution neural network (CNN) approach to extract features and implement classification for high resolution remote sensing images. The employment of GLCM is able to represent the original images and eliminate redundant information and undesired noises. Meanwhile, taking shallow features as the input of deep network will contribute to a better guidance and interpretability. In consideration of the amount of samples, some strategies such as L2 regularization and dropout methods are used to prevent over-fitting. The fine-tuning strategy is also used in our study to reduce training time and further enhance the generalization performance of the network. Experiments with popular data sets such as PaviaU data validate that our proposed method leads to a performance improvement compared to individual involved approaches.
机译:有效的光谱和空间像素描述为起着高分辨率遥感图像的分类的显著作用。基于像素的特征提取的当前方法是两种主要种类:一个包括广泛使用的主成分分析(PCA)和灰度共生矩阵(GLCM)为一体的浅光谱和形状特征的代表,并且其它是指采用深层神经网络,并已经对分类准确度极大的提升,深基于学习的方法。然而,以往传统的功能都不足以描绘出高分辨率图像的复杂分布,而深功能的需求大量样本对网络进行训练,否则在装修,如果只限于样本参与训练容易发生。鉴于上述情况,提出了一种基于GLCM卷积神经网络(CNN)的方法来提取特征和实施高分辨率遥感图像分类。 GLCM的就业是能够代表原始图像,并消除冗余信息的不良噪声。同时,以浅拥有深网络的投入将有助于更好地指导和可解释性。考虑样品的量的,一些策略,例如L2正规化和漏失方法用于防止过拟合。微调策略也适用于我们的研究,以缩短培训时间,进一步提高了网络的泛化性能。与流行的数据集,如PaviaU数据验证实验,我们提出的方法导致的性能改进相比,个别参与的方法。

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