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Semi-supervised change detection using modified self-organizing feature map neural network

机译:改进的自组织特征图神经网络的半监督变化检测

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摘要

In the present article, semi-supervised learning is integrated with an unsupervised context-sensitive change detection technique based on modified self-organizing feature map (MSOFM) network. In the proposed methodology, training of the MSOFM network is initially performed using only a few labeled patterns. Thereafter, the membership values, in both the classes, for each unlabeled pattern are determined using the concept of fuzzy set theory. The soft class label for each of the unlabeled patterns is then estimated using the membership values of its K nearest neighbors. Here, training of the network using the unlabeled patterns along with a few labeled patterns is carried out iteratively. A heuristic method has been suggested to select some patterns from the unlabeled ones for training. To check the effectiveness of the proposed methodology, experiments are conducted on three multi-temporal and multi-spectral data sets. Performance of the proposed work is compared with that of two unsupervised techniques, a supervised technique and two semi-supervised techniques. Results are also statistically validated using paired t-test. The proposed method produced promising results.
机译:在本文中,半监督学习与基于改进的自组织特征图(MSOFM)网络的无监督上下文相关更改检测技术集成在一起。在所提出的方法中,最初仅使用一些标记的模式对MSOFM网络进行训练。此后,使用模糊集理论的概念确定每个未标记模式在两个类中的隶属度值。然后,使用其K个最近邻居的成员资格值来估计每个未标记模式的软类标签。在此,迭代地执行使用未标记模式以及一些标记模式的网络训练。已提出一种启发式方法,从未标记的模式中选择一些模式进行训练。为了检查所提出方法的有效性,对三个多时间和多光谱数据集进行了实验。将拟议工作的性能与两种非监督技术,一种监督技术和两种半监督技术的性能进行比较。结果也使用配对t检验进行统计学验证。所提出的方法产生了可喜的结果。

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