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Unsupervised-Restricted Deconvolutional Neural Network for Very High Resolution Remote-Sensing Image Classification

机译:用于超高分辨率遥感影像分类的无监督限制反卷积神经网络

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As the acquisition of very high resolution (VHR) satellite images becomes easier owing to technological advancements, ever more stringent requirements are being imposed on automatic image interpretation. Moreover, per-pixel classification has become the focus of research interests in this regard. However, the efficient and effective processing and the interpretation of VHR satellite images remain a critical task. Convolutional neural networks (CNNs) have recently been applied to VHR satellite images with considerable success. However, the prevalent CNN models accept input data of fixed sizes and train the classifier using features extracted directly from the convolutional stages or the fully connected layers, which cannot yield pixel-to-pixel classifications. Moreover, training a CNN model requires large amounts of labeled reference data. These are challenging to obtain because per-pixel labeled VHR satellite images are not open access. In this paper, we propose a framework called the unsupervised-restricted deconvolutional neural network (URDNN). It can solve these problems by learning an end-to-end and pixel-to-pixel classification and handling a VHR classification using a fully convolutional network and a small number of labeled pixels. In URDNN, supervised learning is always under the restriction of unsupervised learning, which serves to constrain and aid supervised training in learning more generalized and abstract feature. To some degree, it will try to reduce the problems of overfitting and undertraining, which arise from the scarcity of labeled training data, and to gain better classification results using fewer training samples. It improves the generality of the classification model. We tested the proposed URDNN on images from the Geoeye and Quickbird sensors and obtained satisfactory results with the highest overall accuracy (OA) achieved as 0.977 and 0.989, respectively. Experiments showed that the combined effects of additional kernels and stages may have produced better results, and two-stage URDNN consistently produced a more stable result. We compared URDNN with four methods and found that with a small ratio of selected labeled data items, it yielded the highest and most stable results, whereas the accuracy values of the other methods quickly decreased. For some categories with fewer training pixels, accuracy for categories from other methods was considerably worse than that in URDNN, with the largest difference reaching almost 10%. Hence, the proposed URDNN can successfully handle the VHR image classification using a small number of labeled pixels. Furthermore, it is more effective than state-of-the-art methods.
机译:随着技术进步,非常高分辨率(VHR)卫星图像的获取变得越来越容易,对自动图像解释的要求越来越严格。此外,按像素分类已经成为这方面研究兴趣的焦点。但是,对VHR卫星图像的有效处理和解释仍然是一项关键任务。卷积神经网络(CNN)最近已应用于VHR卫星图像,并取得了相当大的成功。但是,流行的CNN模型接受固定大小的输入数据,并使用直接从卷积级或完全连接的层中提取的特征来训练分类器,这无法产生像素到像素的分类。此外,训练CNN模型需要大量带标签的参考数据。由于按像素标记的VHR卫星图像不是开放访问的,因此很难获得这些图像。在本文中,我们提出了一个称为无监督限制反卷积神经网络(URDNN)的框架。它可以通过学习端到端和像素到像素分类并使用完全卷积网络和少量标记像素来处理VHR分类来解决这些问题。在URDNN中,监督学习始终处于非监督学习的约束之下,这有助于约束和帮助监督训练以学习更广义和抽象的特征。在某种程度上,它将尝试减少因标记的训练数据不足而引起的过度拟合和训练不足的问题,并使用更少的训练样本获得更好的分类结果。它提高了分类模型的通用性。我们在Geoeye和Quickbird传感器的图像上测试了建议的URDNN,并获得了令人满意的结果,其最高总体精度(OA)分别达到0.977和0.989。实验表明,附加内核和阶段的组合效果可能会产生更好的结果,而两阶段URDNN始终会产生更稳定的结果。我们将URDNN与四种方法进行了比较,发现选择的标记数据项所占比例较小时,它会产生最高和最稳定的结果,而其他方法的准确性值迅速下降。对于某些训练像素较少的类别,其他方法对类别的准确度要比URDNN差很多,最大的差异接近10%。因此,提出的URDNN可以使用少量标记像素成功处理VHR图像分类。此外,它比最新方法更有效。

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