神经网络在多光谱遥感数据分类中的优化应用

M. Toshniwal
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引用次数: 12

摘要

卫星图像处理是遥感领域的重点研究领域之一。遥感从这一领域获得了巨大的应用,如地形分析和生成,地形测绘。传统的统计方法在这一领域取得了一定的成功,但效率受到结果稳健性的限制。统计方法是参数化的,基于假设的统计分布,因此结果的效率和正确性与数据与假设分布的接近程度密切相关。前馈神经网络可以训练学习像素类,因此可以应用于卫星图像分割领域。本文介绍了一种用于训练参数选择和训练集收集的技术。本文还探讨了一种加速训练过程和减少分类时间的算法。本文提供了一种适当发展的神经网络结构,具有较高的精度。我们在标准参数方面获得了精度和效率,能够实现kappa系数为0.97的准确图像分割。分类时间减少了70%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An optimized approach to application of neural networks to classification of multispectral, remote sensing data
Satellite image processing is one of the key research areas in the area of remote sensing. Remote sensing derives immense applications from this field like terrain analysis and generation, topographic mapping. Traditional statistical approaches provide reasonable success in this field, but the efficiency is limited with respect to the robustness of results. The statistical approaches are parametric, based on an assumed statistical distribution and hence the efficiency and correctness of results closely correlates to the proximity of data to the assumed distribution. Feed-forward neural networks can be trained to learn pixel classes and hence can be applied to the area of satellite image segmentation. This paper describes a technique developed to select training parameters and collection of training sets. An algorithm to accelerate the training process and reduce the time for classification is also explored. This paper provides a suitably developed neural network architecture with high accuracy. We obtained accuracy and efficiency in terms of standard parameters, and were able to achieve accurate image segmentation with kappa coefficient of 0.97. The time for classification was reduced by more than 70%.
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