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首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Effectiveness of SID as Spectral Similarity Measure to Develop Crop Spectra from Hyperspectral Image
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Effectiveness of SID as Spectral Similarity Measure to Develop Crop Spectra from Hyperspectral Image

机译:SID作为频谱相似度测量从高光谱图像开发作物谱的效果

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摘要

The present study was undertaken with the objective to check effectiveness of spectral information divergence (SID) to develop spectra from image for crop classes based on spectral similarity with field spectra. In multispectral and hyperspectral remote sensing, classification of pixels is obtained by statistical comparison (by means of spectral similarity) of known field or library spectra to unknown image spectra. Though these algorithms are readily used, little emphasis has been placed on use of various spectral similarity measures to develop crop spectra from the image itself. Hence, in this study methodology suggested to develop spectra for crops based on SID. Absorption features are unique and distinct; hence, validation of the developed spectra is carried out using absorption features by comparing it with field spectra and finding average correlation coefficient r=0.982 and computed SID equivalent r=0.989. Effectiveness of developed spectra for image classification was computed by probability of spectral discrimination (PSD) and resulted in higher probability for the spectra developed based on SID. Image classification was carried out using field spectra and spectra assigned by SID. Overall classification accuracy of the image classified by field spectra is 78.30% and for the image classified by spectra assigned through SID-based approach is 91.82%. Z test shows that image classification carried out using spectra developed by SID is better than classification carried out using field spectra and significantly different. Validation by absorption features, effectiveness by PSD and higher classification accuracy show possibility of new approach for spectra development based on SID spectral similarity measure.
机译:本研究采用目的是检查光谱信息分歧(SID)的有效性,以基于与场光谱的光谱相似性从图像中的图像中的图像开发光谱。在多光谱和高光谱遥感中,通过已知字段或库谱的统计比较(通过光谱相似性)来获得像素的分类对未知图像谱获得。虽然这些算法很容易使用,但是已经对使用各种光谱相似度措施来利用不同的光谱相似措施来开发来自图像本身的作物光谱。因此,在本研究中,建议基于SID开发农作物的谱。吸收特征是独一无二的;因此,通过将其与现场光谱进行比较并找到平均相关系数r = 0.982并计算SID等效r = 0.989,通过吸收特征进行验证。通过光谱辨别率(PSD)的概率计算图像分类的发发光谱的有效性,并导致基于SID开发的光谱的概率较高。使用SID分配的现场光谱和谱进行图像分类。由现场光谱分类的图像的整体分类准确性为78.30%,并且通过SID基方法分配的光谱分类的图像是91.82%。 Z测试表明,使用SID开发的光谱进行的图像分类优于使用现场光谱进行的分类和显着不同。通过吸收特征验证,PSD的有效性和更高的分类准确性显示了基于SID光谱相似度测量的光谱开发新方法的可能性。

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