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DenseNet-Based Depth-Width Double Reinforced Deep Learning Neural Network for High-Resolution Remote Sensing Image Per-Pixel Classification

机译:基于DenseNet的深度宽度双重增强深度学习神经网络用于高分辨率遥感影像的按像素分类

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Deep neural networks (DNNs) face many problems in the very high resolution remote sensing (VHRRS) per-pixel classification field. Among the problems is the fact that as the depth of the network increases, gradient disappearance influences classification accuracy and the corresponding increasing number of parameters to be learned increases the possibility of overfitting, especially when only a small amount of VHRRS labeled samples are acquired for training. Further, the hidden layers in DNNs are not transparent enough, which results in extracted features not being sufficiently discriminative and significant amounts of redundancy. This paper proposes a novel depth-width-reinforced DNN that solves these problems to produce better per-pixel classification results in VHRRS. In the proposed method, densely connected neural networks and internal classifiers are combined to build a deeper network and balance the network depth and performance. This strengthens the gradients, decreases negative effects from gradient disappearance as the network depth increases and enhances the transparency of hidden layers, making extracted features more discriminative and reducing the risk of overfitting. In addition, the proposed method uses multi-scale filters to create a wider neural network. The depth of the filters from each scale is controlled to decrease redundancy and the multi-scale filters enable utilization of joint spatio-spectral information and diverse local spatial structure simultaneously. Furthermore, the concept of network in network is applied to better fuse the deeper and wider designs, making the network operate more smoothly. The results of experiments conducted on BJ02, GF02, geoeye and quickbird satellite images verify the efficacy of the proposed method. The proposed method not only achieves competitive classification results but also proves that the network can continue to be robust and perform well even while the amount of labeled training samples is decreasing, which fits the small training samples situation faced by VHRRS per-pixel classification.
机译:深度神经网络(DNN)在超高分辨率遥感(VHRRS)每像素分类领域面临许多问题。其中的一个问题是,随着网络深度的增加,梯度消失会影响分类的准确性,并且要学习的参数的相应增加也会增加过度拟合的可能性,尤其是在仅采集少量VHRRS标记的样本进行训练时。此外,DNN中的隐藏层不够透明,这导致提取的特征没有足够的判别力和大量的冗余。本文提出了一种新颖的深度宽度增强DNN,可以解决这些问题,从而在VHRRS中产生更好的每像素分类结果。在提出的方法中,紧密连接的神经网络和内部分类器相结合以构建更深的网络并平衡网络的深度和性能。随着网络深度的增加,这会增强渐变,减少渐变消失带来的负面影响,并增强隐藏层的透明度,从而使提取的特征更具区分性,并降低过度拟合的风险。另外,所提出的方法使用多尺度滤波器来创建更广泛的神经网络。控制每个比例尺的滤镜深度以减少冗余,多比例滤镜可同时利用联合时空光谱信息和各种局部空间结构。此外,网络中的网络概念被应用来更好地融合更深更广的设计,从而使网络运行更加顺畅。在BJ02,GF02,土眼和快鸟卫星图像上进行的实验结果证明了该方法的有效性。所提出的方法不仅获得了竞争性的分类结果,而且证明了即使在标记的训练样本数量减少的情况下,网络也可以继续保持鲁棒性和良好的性能,这适合于VHRRS每像素分类所面临的小的训练样本的情况。

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