An Improved LandTrendr Algorithm for Forest Disturbance Detection Using Optimized Temporal Trajectories of the Spectrum: A Case Study in Yunnan Province, China

Author:

He Li12ORCID,Hong Liang12,Zhu A-Xing3ORCID

Affiliation:

1. Faculty of Geography, Yunnan Normal University, Kunming 650500, China

2. China and GIS Technology Research Centre of Resource and Environment in Western China of Ministry of Education, Yunnan Normal University, Kunming 650500, China

3. Department of Geography, University of Wisconsin-Madison, Madison, WI 53706, USA

Abstract

Forest disturbance mapping plays an important role in furthering our understanding of forest dynamics. The Landsat-based detection of Trends in Disturbance and Recovery (LandTrendr) algorithm is widely used in forest disturbance mapping. However, it neglects the quality of the temporal trajectory and its change trends for forest disturbance mapping. Therefore, the aim of this paper is to improve LandTrendr (iLandTrendr) for forest disturbance mapping by optimizing its temporal trajectories and the post-processing of detection results. Specifically, the temporal trajectory of complex forest disturbance types was optimized using the Savitzky–Golay (SG) filter with constraints. That is, the smooth value generated from the SG filter for the disturbance year was replaced by the satellite observations when the nonlinear abrupt signals were included in the multi-temporal data. The forest disturbance detected by LandTrendr was further modified using the consistency of spectral variation trends. A case study using iLandTrendr to detect forest disturbance in Yunnan Province was conducted. Compared to the LandTrendr method, which has an overall accuracy (OA) of 35.88%, iLandTrendr generated forest disturbance mapping with an OA of 89.32%, which was significantly higher. The total mapped area of disturbance was 1,985,820.9 km2, accounting for 49.69% of the total area. The disturbances were predominately caused by natural factors, such as wildfires, pests and diseases, and forest degradation, accounting for 85.31% of the total disturbed area. iLandTrendr can quickly and accurately detect the occurrence year of complex forest disturbance types and can be extended for the forest disturbance mapping of a large area.

Funder

Major Scientific and Technological Projects of Yunnan Province

National Natural Science Foundation of China

Yunnan Province Basic Research Special Key Project

National Social Science Fund of China

Caiyun Postdoctoral Innovation Project in Yunnan Province

Opened-End Fund of the Faculty of Geography, Yunnan Normal University

Publisher

MDPI AG

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