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Convolutional Neural Networks for Large-Scale Remote-Sensing Image Classification

机译:卷积神经网络用于大规模遥感图像分类

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We propose an end-to-end framework for the dense, pixelwise classification of satellite imagery with convolutional neural networks (CNNs). In our framework, CNNs are directly trained to produce classification maps out of the input images. We first devise a fully convolutional architecture and demonstrate its relevance to the dense classification problem. We then address the issue of imperfect training data through a two-step training approach: CNNs are first initialized by using a large amount of possibly inaccurate reference data, and then refined on a small amount of accurately labeled data. To complete our framework, we design a multiscale neuron module that alleviates the common tradeoff between recognition and precise localization. A series of experiments show that our networks consider a large amount of context to provide fine-grained classification maps.
机译:我们提出了使用卷积神经网络(CNN)对卫星图像进行密集的像素级分类的端到端框架。在我们的框架中,直接训练CNN可以从输入图像中生成分类图。我们首先设计一个完全卷积的体系结构,并证明其与密集分类问题的相关性。然后,我们通过两步训练方法解决训练数据不完善的问题:首先使用大量可能不准确的参考数据初始化CNN,然后在少量经过精确标记的数据上进行优化。为了完善我们的框架,我们设计了一个多尺度神经元模块,以减轻识别和精确定位之间的常见折衷。一系列实验表明,我们的网络考虑了大量上下文,以提供细粒度的分类图。

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