基于模糊深度卷积神经网络的高光谱遥感图像分割

Tianyu Zhao, Jindong Xu
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引用次数: 4

摘要

遥感影像的“同谱”和“带谱异物”使得传统的分割方法受到很大的限制。以深度卷积神经网络为代表的现有分割方法取得了突破性进展。然而,传统的深度学习是一种完全确定性的模型,不能很好地描述数据的不确定性。为了解决这一问题,本文提出了一种新的模糊深度神经网络RSFCNN (Remote Sensing image segmentation with fuzzy Convolutional neural network)。该网络集成了模糊单元和传统卷积单元。利用卷积单元提取不同比例的判别特征,为像素级遥感图像分割提供全面的信息。采用模糊逻辑单元处理各种不确定性,提供更可靠的分割结果。本文采用端到端训练方案学习模糊单元和卷积单元的参数。在Vaihingen ISPRS数据集上进行了实验。实验结果表明,该方法具有较高的分割精度和较好的分割性能。
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Hyperspectral Remote Sensing Image Segmentation Based on the Fuzzy Deep Convolutional Neural Network
The "synonyms spectrum" and "foreign body with the spectrum" of remote sensing images have caused the traditional segmentation methods to be greatly limited. Existing segmentation methods represented by deep convolution neural network have made breakthrough progress. However, traditional deep learning is a completely deterministic model, which can not describe the data uncertainty well. To solve this problem, a new fuzzy deep neural network is proposed in this paper, called RSFCNN (Remote Sensing image segmentation with Fuzzy Convolutional Neural Network). The network integrates fuzzy unit and traditional convolution unit. Convolution unit is used to extract discriminant features with different proportions, thus providing comprehensive information for pixel-level remote sensing image segmentation. Fuzzy logic unit is used to deal with various uncertainties and provide more reliable segmentation results. In this paper, end-to-end training scheme is used to learn the parameters of fuzzy and convolution units. Experiments were carried out on the data set of ISPRS Vaihingen. According to the experimental results, the proposed method has higher segmentation accuracy and better performance than other algorithms.
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