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REMOTE SENSING SCENE CLASSIFICATION USING MULTIPLE PYRAMID POOLING

机译:使用多个金字塔池遥感场景分类

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Remote sensing image scene classification has gained remarkable attention, due to its versatile use in different applications like geospatial object detection, ground object information extraction, environment monitoring and etc. The scene not only contains the information of the ground objects, but also includes the spatial relationship between the ground objects and the environment. With rapid growth of the amount of remote sensing image data, the need for automatic annotation methods for image scenes is more urgent. This paper proposes a new framework for high resolution remote sensing images scene classification based on convolutional neural network. To eliminate the requirement of fixed-size input image, multiple pyramid pooling strategy is equipped between convolutional layers and fully connected layers. Then, the fixed-size features generated by multiple pyramid pooling layer was extended to one-dimension fixed-length vector and fed into fully connected layers. Our method could generate a fixed-length representation regardless of image size, at the same time get higher classification accuracy. On UC-Merced and NWPU-RESISC45 datasets, our framework achieved satisfying accuracies, which is 93.24% and 88.62% respectively.
机译:遥感图像场景分类已获得显着的关注,由于其在地理空间对象检测,地面对象信息提取,环境监测等的不同应用中的多功能使用。场景不仅包含地面对象的信息,还包括空间地面对象与环境之间的关系。随着遥感图像数据量的快速增长,需要对图像场景进行自动注释方法更加紧急。本文提出了一种基于卷积神经网络的高分辨率遥感图像场景分类框架。为了消除固定尺寸输入图像的要求,卷积层和完全连接的层之间的多个金字塔汇集策略配备。然后,由多个金字塔汇集层产生的固定尺寸特征延伸到一维固定长度向量,并送入完全连接的层。无论图像尺寸如何,我们的方法都可以产生固定长度表示,同时获得更高的分类精度。在UC-Merced和NWPU-REARISC45数据集上,我们的框架达到了满足的准确性,分别为93.24%和88.62%。

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