Abstract
The accurate and timely detection of forest disturbances can provide valuable information for effective forest management. Combining dense time series observations from optical and synthetic aperture radar satellites has the potential to improve large-area forest monitoring. For various disturbances, machine learning algorithms might accurately characterize forest changes. However, there is limited knowledge especially on the use of machine learning algorithms to detect forest disturbances through hybrid approaches that combine different data sources. This study investigated the use of dense Landsat 8 and Sentinel-1 time series data for detecting disturbances in tropical seasonal forests based on a machine learning algorithm. The random forest algorithm was used to predict the disturbance probability of each Landsat 8 and Sentinel-1 observation using variables derived from a harmonic regression model, which characterized seasonality and disturbance-related changes. The time series disturbance probabilities of both sensors were then combined to detect forest disturbances in each pixel. The results showed that the combination of Landsat 8 and Sentinel-1 achieved an overall accuracy of 83.6% for disturbance detection, which was higher than the disturbance detection using only Landsat 8 (78.3%) or Sentinel-1 (75.5%). Additionally, more timely disturbance detection was achieved by combining Landsat 8 and Sentinel-1. Small-scale disturbances caused by logging led to large omissions of disturbances; however, other disturbances were detected with relatively high accuracy. Although disturbance detection using only Sentinel-1 data had low accuracy in this study, the combination with Landsat 8 data improved the accuracy of detection, indicating the value of dense Landsat 8 and Sentinel-1 time series data for timely and accurate disturbance detection.
Highlights
Understanding forest dynamics provides valuable knowledge for effective forest management [1]
This study assessed the effectiveness of using dense time series Landsat 8 and Sentinel-1 data for the detection of forest disturbances in tropical seasonal forests
The disturbance probability of each observation was predicted from a machine learning algorithm (Random Forest) using predictor variables from harmonic regression models
Summary
Understanding forest dynamics provides valuable knowledge for effective forest management [1]. Sensed data are widely used to characterize these dynamics. Optical satellite remote sensing is suitable for capturing current and past forest conditions over large areas because of its wide spatial coverage and frequent temporal observations [2]. There has been an increase in freely available and well-calibrated satellite data (e.g., Landsat and Sentinel-2) thanks to open data policies [4,5,6,7,8]. This situation has encouraged researchers to process data from numerous satellites to extract temporally and spatially improved forest change information [9,10,11]
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