首页> 外文会议>Electronics, Circuits and Systems, 2003. ICECS 2003. Proceedings of the 2003 10th IEEE International Conference on >Principal component analysis by neural network. Application: remote sensing images compression and enhancement
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Principal component analysis by neural network. Application: remote sensing images compression and enhancement

机译:通过神经网络进行主成分分析。应用范围:遥感影像压缩与增强

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The quality of remotely sensed images depends on the conditions in which the satellite works. These conditions are not favourable for acquiring image data that are net and directly exploitable. The spectral images provided by satellite are correlated, noisy, and require valuable memory space. To improve, de-correlate and compress the remotely sensed images, a PCA-based neural network model is proposed. Its architecture, learning algorithm, and convergence are the subjects of this paper. The obtained results, using real data provided by the Landsat-TM satellite, show that the model performs well the above mentioned tasks.
机译:遥感图像的质量取决于卫星工作的条件。这些条件不利于获取可直接使用的净图像数据。卫星提供的光谱图像是相关的,嘈杂的,并且需要宝贵的存储空间。为了改善,解相关和压缩遥感图像,提出了一种基于PCA的神经网络模型。它的体系结构,学习算法和收敛是本文的主题。使用Landsat-TM卫星提供的真实数据获得的结果表明,该模型可以很好地完成上述任务。

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