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Application of Convolutional Neural Network in Object Recognition of Remote Sensing Image

机译:卷积神经网络在遥感图像目标识别中的应用

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Object recognition of remote sensing image is of great theoretical significance and application value in many fields. Faster and more effective object recognition methods are the hot and difficult point in the field of image research. Aiming at the problems of object recognition of remote sensing image, in this paper, the convolutional neural network with inter-class constraint (ICNN) is applied to object recognition of remote sensing image. This method replaces the softmax loss function of traditional convolutional neural network with the inter-loss function to obtain smaller intra-class distance and larger inter-class distance. This method significantly improves the effectiveness of image feature classification. Experiments are conducted on the US Land Use Classification Data Set 21(UCM_LandUse_21), and the experimental results showed that the proposed method can realize the fast and accurate recognition of remote sensing image and has a good promotion significance.
机译:遥感图像的目标识别在许多领域具有重要的理论意义和应用价值。更快,更有效的目标识别方法是图像研究领域的热点和难点。针对遥感图像的目标识别问题,将具有类间约束的卷积神经网络(ICNN)应用于遥感图像的目标识别。该方法用损失间函数代替传统的卷积神经网络的softmax损失函数,从而获得较小的类内距离和较大的类间距离。该方法显着提高了图像特征分类的有效性。在美国土地利用分类数据集21(UCM_LandUse_21)上进行了实验,实验结果表明,该方法可以实现快速,准确的遥感图像识别,具有良好的推广意义。

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