Satellite Image Segmentation with Deep Residual Architectures for Time-Critical Applications

Sina Ghassemi, C. Sandu, A. Fiandrotti, F. G. Tonolo, P. Boccardo, Gianluca Francini, E. Magli
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引用次数: 6

Abstract

We address the problem of training a convolutional neural network for satellite images segmentation in emergency situations, where response time constraints prevent training the network from scratch. Such case is particularly challenging due to the large intra-class statistics variations between training images and images to be segmented captured at different locations by different sensors. We propose a convolutional encoder-decoder network architecture where the encoder builds upon a residual architecture. We show that our proposed architecture enables learning features suitable to generalize the learning process across images with different statistics. Our architecture can accurately segment images that have no reference in the training set, whereas a minimal refinement of the trained network significantly boosts the segmentation accuracy.
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基于深度残差结构的卫星图像分割
我们解决了在紧急情况下训练卷积神经网络用于卫星图像分割的问题,在这种情况下,响应时间的限制阻止了从头开始训练网络。这种情况特别具有挑战性,因为训练图像和由不同传感器在不同位置捕获的待分割图像之间的类内统计差异很大。我们提出了一种卷积编码器-解码器网络架构,其中编码器建立在残差架构之上。我们表明,我们提出的架构使学习特征适用于具有不同统计量的图像的学习过程。我们的架构可以准确地分割训练集中没有参考的图像,而对训练网络进行最小的细化可以显著提高分割精度。
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