4.7 Article

Multi-sensor change detection for within-year capture and labelling of forest disturbance

期刊

REMOTE SENSING OF ENVIRONMENT
卷 268, 期 -, 页码 -

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.rse.2021.112741

关键词

Forest; Landsat; Sentinel-2; Land cover; Disturbance; Wildfire; Virtual constellation

资金

  1. NSERC Discovery Grant
  2. Earth Observation to Inform Canada's Climate Change Agenda (EO3C) project - the Canadian Space Agency (CSA)
  3. Earth Observation to Inform Canada's Climate Change Agenda (EO3C) project - Government Related Initiatives Program (GRIP)
  4. Earth Observation to Inform Canada's Climate Change Agenda (EO3C) project - Canadian Forest Service (CFS) of Natural Resources Canada (NRCan)
  5. Government of Canada

向作者/读者索取更多资源

The study focuses on using Landsat-8 and Sentinel-2A and -2B data streams to detect stand-replacing forest changes in central British Columbia, Canada, with reduced latency. They introduce a new algorithm, SLIMS, to rapidly and reliably detect change and use a Bayesian approach to combine changes detected in the Landsat and Sentinel data streams. The results show high accuracy in identifying the type and timing of stand-replacing disturbances in these forests.
Knowledge of forest change type and timing is required for forest management, reporting, and science. Time series of historic satellite data (e.g. Landsat) have resulted in an invaluable record of changes in forest conditions. Natural resource management and reporting typically operate at an annual time step, yet the recent addition of data streams from compatible satellites (e.g., Sentinel-2) offer the possibility of generating frequent, management-relevant forest status assessments and maps of change. Analytical approaches that rely on a time series of observations to identify change often struggle to provide reliable estimates of change events in terminal years of the time series until subsequent, additional observations are available. Methods to meaningfully integrate observations from compatible satellite platforms can provide short-term information to augment and refine estimates of change area and type in those terminal years of the time series. In this research we fuse Landsat-8 and Sentinel-2A and -2B data streams to capture, with reduced latency, stand replacing forest change (harvest and wildfire), tagged to a temporal window of occurrence over an similar to 10,000 km(2) area of central British Columbia, Canada. We introduce a new algorithm, SLIMS (Shrinking Latency in Multiple Streams), to rapidly and reliably detect change, and then use an established Bayesian approach to meaningfully combine changes detected in the Landsat and Sentinel data streams. Our results indicate that the type and timing of stand-replacing disturbances can be identified in these forests with high accuracy. Overall, 13.9% of the study area was disturbed between the end of 2016 and the end of 2017, with the majority of disturbed area attributable to wildfire and a smaller amount attributed to forest harvesting, mostly in the winter 2016-2017 with some limited summer harvest also occurring. Overall accuracy of the change, assessed using independent validation data, was 95% +/- 2.3%. The capacity of these change results to augment a trend-based assessment of change for 2017 was also demonstrated and provides a framework for how short- and long-term change detection approaches provide complementary information that can increase the timeliness and accuracy of change area estimates in the terminal years of a time series. These findings also demonstrate the capacity to regard Landsat and Sentinel-2 sensors as elements of a virtual constellation to obtain forest change information in a timely (i.e., end of growing season) and reliable fashion over large areas.

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