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Feature Fusion with Deep Supervision for Remote-Sensing Image Scene Classification

机译:具有深度监控遥感图像场景分类的特征融合

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The convolutional neural networks (CNNs) have shown an intrinsic ability to automatically extract high level representations for image classification, but there is a major hurdle to their deployment in the remote-sensing domain because of a relative lack of training data. Moreover, traditional fusion methods use either low-level features or score-based fusion to fuse the features. In order to address the aforementioned issues, we employed a deep supervision (DS) strategy to enhance the generalization performance in the intermediate layers of the AlexNet model for remote-sensing image scene classification. The proposed DS strategy not only prevents from overfitting, but also extracts the features more transparently. Secondly, the canonical correlation analysis (CCA) is adopted as a feature fusion strategy to further refine the features with more discriminative power. The fused AlexNet features achieved by the proposed framework have much higher discrimination than the pure features. Extensive experiments on two challenging datasets: 1) UC MERCED data set and 2) WHU-RS dataset demonstrate that the two proposed approaches both enhance the performance of the original AlexNet architecture, and also outperform several state-of-the-art methods currently in use.
机译:卷积神经网络(CNNS)已经示出了自动提取了图像分类的高级表示的内在能力,但由于相对缺乏训练数据,在遥感域中的部署存在主要障碍。此外,传统的融合方法使用低级功能或基于分数的融合来融合该功能。为了解决上述问题,我们雇用了深度监督(DS)策略,以提高亚历尼网模型的中间层的泛化性能,用于遥感图像场景分类。拟议的DS策略不仅可以防止过度装备,而且还更透明地提取特征。其次,采用规范相关分析(CCA)作为特征融合策略,以进一步优化具有更辨别力的特征。由所提出的框架实现的融合亚思网特征具有比纯特征更高的识别。在两个具有挑战性的数据集上进行广泛的实验:1)UC梅式数据集和2)WHU-RS数据集表明,两种提出的方​​法都增强了原始亚历克网架构的性能,并且还优于目前若干最先进的方法用。

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