Li Hui, Lin Qi-Zhong, Wang Qin-Jun, Liu Qing-Jie, Wu Yun-Zhao
Center for Earth Observation and Digital Earth, Chinese Academy of Sciences, Beijing 100086, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2010 Mar;30(3):644-8.
The present study introduced the generalized morphological filter into the denoising of visible and near infrared spectra for the first time, and provided a new method for denoising the reflectance spectra by combining mathematical morphology methods with the wavelet packet transformation. The authors used vegetable spectra from USGS spectral library as the reference spectra, and obtained the noised spectra by adding noises with different signal-to-noise ratios to the referenced spectra. The results were evaluated by signal-to-noise ratio (SNR), root mean squared error (RMSE), normalized correlation coefficient (NCC) and smoothness ratio (SR) of the denoised spectra. The authors' results showed that both the thresholding on wavelet packet decomposition best bases method and the generalized morphological filter method could maintain the spectral shape and the spectral smoothness after denoising. The generalized morphological filter method can remove larger amplitude random noise whereas the continuous small amplitude random noise could not be removed well. Hence, the denoised spectra were not smooth. Nevertheless, the denoised spectra using the thresholding on the best base groups of wavelet packet decomposition method were smooth, but the larger amplitude noise could not be removed completely. The authors' method by combining the two methods has the merits of the two methods but removing their defects. The results showed that both large and small amplitude noise could be removed completely, meanwhile the normalized correlation coefficient (NCC) and smoothness ratio (SR) were improved, which indicated that the authors' method is superior to other methods in denoising visible and near infrared spectra.
本研究首次将广义形态学滤波器引入可见和近红外光谱的去噪中,通过将数学形态学方法与小波包变换相结合,为反射光谱的去噪提供了一种新方法。作者使用美国地质调查局光谱库中的植物光谱作为参考光谱,并通过向参考光谱中添加不同信噪比的噪声来获得带噪光谱。通过去噪光谱的信噪比(SNR)、均方根误差(RMSE)、归一化相关系数(NCC)和平滑度比(SR)对结果进行评估。作者的结果表明,小波包分解最佳基方法的阈值处理和广义形态学滤波器方法在去噪后都能保持光谱形状和光谱平滑度。广义形态学滤波器方法可以去除较大幅度的随机噪声,而连续的小幅度随机噪声不能很好地去除,因此去噪后的光谱不光滑。然而,使用小波包分解最佳基组阈值处理方法得到的去噪光谱是平滑的,但较大幅度的噪声不能完全去除。作者将这两种方法相结合的方法兼具两种方法的优点,同时消除了它们的缺点。结果表明,该方法能完全去除大、小幅度噪声,同时提高了归一化相关系数(NCC)和平滑度比(SR),表明作者提出的方法在可见和近红外光谱去噪方面优于其他方法。