Publications

Long, YH; Qin, JX; Wang, K; Xue, Y; Wang, L (2023). Prediction of Vegetation Change by Discrete Wavelet Decomposition Based on Remote Sensing Time Series Images. TRAITEMENT DU SIGNAL, 40(1), 123-132.

Abstract
The development of remote sensing technology has accumulated a large number of remote sensing image time series data for human monitoring of surface vegetation change, which provides a basis for vegetation change prediction. In order to improve the prediction accuracy of vegetation change, this paper uses discrete wavelet to decompose remote sensing image sequences at multiple scales, to explore the difference of influence of different temporal scale change characteristics on vegetation spatio-temporal change prediction, and find the best decomposition scale for vegetation change prediction. In this paper, the research object is the MODIS 13Q1 EVI image data of Hunan Province from 2001 to 2021. The discrete wavelet is adopted to obtain multi-scale vegetation trend components and detailed component sequences, and then complete the LSTM modeling prediction and comparison. The following are the experimental findings: the predictive ability of the discrete wavelet decomposition sequence group is better than that of the original EVI time series to varying degrees. The order of prediction accuracy is: monthly scale > seasonal scale > annual scale > original EVI time series. Thus, it is of reference significance to the research of application scenarios of change prediction of other regionalized variables with multi-scale characteristics.

DOI:
10.18280/ts.400111

ISSN:
1958-5608