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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Polycentric Circle Pooling in Deep Convolutional Networks for High-Resolution Remote Sensing Image Recognition
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Polycentric Circle Pooling in Deep Convolutional Networks for High-Resolution Remote Sensing Image Recognition

机译:高分辨率遥感图像识别深度卷积网络中的多中心圈池

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摘要

Most existing deep learning-based methods use feature maps extracted from convolutional neural networks (CNNs) for classification and detection of high-resolution remote sensing images (HRSIs). However, directly applying these features to classification and object detection in HRSI is problematic because of rotational variations. In this article, we design networks using the polycentric circle pooling (PCP) strategy to alleviate the abovementioned problem. The PCP network (PCP-net) structure can generate a fixed-length representation for different input image sizes and encode rotation-invariant information. With these advantages, PCP-net should in general improve the CNN-based HRSI classification methods. Specifically, on the basis of the concentric circle pooling network structure, we improve the structure using multiple concentric circle centers to generate more robust rotation-invariant information. Using two challenging HRSI scene datasets, we prove that PCP-net improves the accuracy of CNN architectures for a scene classification tasks. PCP-net can be conveniently applied to object detection because the output size is fixed regardless of image size. Experiments applying the faster region-CNN to a publicly available ten-class object detection dataset demonstrate that our proposed PCP can achieve accuracy higher than that of a region of interest pooling in the HRSI object detection task.
机译:大多数现有的基于深度学习的方法使用从卷积神经网络(CNNS)中提取的特征映射,用于分类和检测高分辨率遥感图像(HRSI)。然而,由于旋转变化,直接将这些特征应用于HRSI中的分类和对象检测是有问题的。在本文中,我们使用多中心圈池(PCP)策略设计网络来缓解上述问题。 PCP网络(PCP-Net)结构可以为不同的输入图像尺寸生成固定长度表示,并编码旋转不变信息。通过这些优点,PCP-Net应该一般提高基于CNN的HRSI分类方法。具体地,在同心圆池结构的基础上,我们使用多个同心圆中心改善结构以产生更强大的旋转不变信息。使用两个具有挑战性的HRSI场景数据集,我们证明了PCP-Net提高了CNN架构的准确性,用于场景分类任务。 PCP-NET可以方便地应用于对象检测,因为无论图像尺寸如何,输出大小都是固定的。将更快的区域CNN应用于公开的十一类对象检测数据集的实验表明,我们所提出的PCP可以实现高于HRSI对象检测任务中汇集的感兴趣区域的准确性。

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