首页> 外文期刊>Neural computing & applications >Effect of Legendre-Fenchel denoising and SVD-based dimensionality reduction algorithm on hyperspectral image classification
【24h】

Effect of Legendre-Fenchel denoising and SVD-based dimensionality reduction algorithm on hyperspectral image classification

机译:Legendre-Fenchel去噪和基于SVD维数减少算法对高光谱图像分类的影响

获取原文
获取原文并翻译 | 示例
           

摘要

This paper describes the importance of performing preprocessing techniques namely, denoising and dimensionality reduction to the hyperspectral data before classification. The two main problems faced in hyperspectral image processing are noise and higher dimension. Legendre-Fenchel transformation denoises each band in the data while preserving the edge information. To overcome the issue of high data volume, inter-band block correlation coefficient technique followed by singular value decomposition and QR decomposition is utilized to reduce the dimension of hyperspectral image without affecting the critical information. The preprocessed data are classified using kernel-based libraries, namely GURLS and LibSVM. Performance of these techniques is evaluated with accuracy assessment measures. The experiment was performed on five datasets. Experimental analysis shows that the proposed denoising technique increases the classification accuracy. In the case of Indian Pines data, with 10% of the training data, the classification accuracy is improved from 83.5 to 97.3%. And also, dimensionality reduction technique gives good classification accuracy even with 50% reduction in the number of bands. The classification accuracy of the Salinas-A and Pavia University data is 99.4 and 94.6% with the 50% dimensionally reduced (100 and 50 bands, respectively) number of bands. The bands extracted by the dimensionality reduction technique using the denoised hyperspectral data differ from that of the hyperspectral data without denoising. This emphasizes the importance of denoising the dataset before applying dimensionality reduction technique. In case of Pavia University, the band numbers above 50 (out of 100 bands) which were not informative bands before denoising are selected as informative bands by dimension reduction technique after denoising .
机译:本文介绍了在分类之前执行预处理技术,即去噪和维度数据的预处理技术的重要性。高光谱图像处理面临的两个主要问题是噪声和更高的尺寸。 Legendre-Fenchel转换在保留边缘信息时剥夺数据中的每个频段。为了克服高数据量的问题,利用奇异值分解之后的带间块的间块相关系数技术,并且QR分解以减少超细图像的维度而不影响关键信息。预处理数据使用基于内核的库,即Gurls和Libsvm进行分类。通过准确性评估措施评估这些技术的性能。实验在五个数据集上进行。实验分析表明,所提出的去噪技术提高了分类精度。在印度松树数据的情况下,随着10%的培训数据,分类准确性从83.5增加到97.3%。而且,即使频带数量减少50%,维度减少技术也会提供良好的分类准确性。 Salina-A和帕维亚大学数据的分类准确性为99.4和94.6%,50%尺寸减少(分别为100和50频段)频带数。通过使用去噪高光谱数据的维度降低技术提取的条带不同于超细数据的情况而不会被去噪。这在施加维度减少技术之前强调了去噪的重要性。在帕维亚大学的情况下,在去噪之前,在去噪之前的50(100个带中)的频带数字被选中为非信息频带,通过尺寸减少技术被选择为信息带。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号