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Multilayer Feature Fusion With Weight Adjustment Based on a Convolutional Neural Network for Remote Sensing Scene Classification

机译:基于卷积神经网络的遥感场景分类多层特征融合

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摘要

Remote sensing scene classification is still a challenging task. Extracting features effectively from restricted existing labeled data is key to scene classification. Convolutional neural networks (CNNs) are an effective method of constructing discriminating feature representation. However, CNNs usually utilize the feature map from the last layer and ignore additional layers with valuable feature information. In addition, the direct integration of multiple layers brings only a small improvement due to feature redundancy and destruction. To explore the potential information from additional layers and improve the effect of feature fusion, we propose multilayer feature fusion accesses with weight adjustment based on a CNN. We construct access to deliver additional features to one layer to achieve feature fusion and set weight factors to adjust the fusion degree to reduce feature redundancy and destruction. We perform experiments on two common data sets, which indicate improved accuracies and advantages of the extraction capability of our method.
机译:遥感场景分类仍然是一个具有挑战性的任务。从限制的现有标记数据有效地提取特征是场景分类的关键。卷积神经网络(CNN)是构建区分特征表示的有效方法。然而,CNN通常利用来自最后一层的特征映射并忽略具有有价值的特征信息的附加层。此外,由于特征冗余和破坏,多层的直接集成仅引起了很小的改进。要从附加层探讨潜在信息并提高特征融合的效果,我们提出了基于CNN的重量调整的多层特征融合访问。我们构建访问将其他功能提供给一层,以实现特征融合,并设置权重因子以调整融合程度,以降低功能冗余和破坏。我们对两个常见数据集进行实验,这表明我们方法的提取能力的精度和优点。

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