Reconstructing NDVI Time Series from Landsat and MODIS and Developing a Species-Specific Validation Dataset for Vegetation Classification in Frontenac Provincial Park

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Authors

Zajaczkiwsky, Sophia Grace

Date

2025-09-30

Type

thesis

Language

eng

Keyword

Phenology , Remote Sensing , MODIS , Landsat , Frontenac Provincial Park , Growing Degree Days (GDD)

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Abstract

Understanding the timing of vegetation green-up and species composition in forests is critical for monitoring ecosystem dynamics and assessing how forests are shifting under climate change. This thesis investigates spring start of season (SOS) using remote sensing and develops a field-based species survey dataset for Frontenac Provincial Park (FPP). SOS was analyzed from MODIS-derived NDVI (2000-2023) and a gap-filled Landsat (1988-2018) time series, each with distinct workflows but using a 0.7 NDVI threshold. R package phenofit was applied to gap-fill the MODIS timeseries, while Landsat was processed independently to identify SOS DOY trends. Growing degree days (GDD) increased significantly (slope = 2.78; p = 0.009) from 1972-2023, reflecting regional warming. However, SOS DOY showed no statistically significant shifts in either dataset. For MODIS, other seasonal metrics—including end of season (EOS, p = 0.028) and length of season (LOS, p = 0.021)—showed significant changes, suggesting asymmetric phenological responses, with a lengthening fall rather than an earlier spring onset. In parallel, a survey of 80 sites in FPP was conducted to capture tree species composition and generate a spatially explicit dataset. This dataset was integrated into an interactive StoryMap to visualize species distributions and support knowledge sharing. While a full species-specific classification was not undertaken, the dataset provides a foundation for future classification efforts as well as a baseline for understanding potential changes to forest composition in the future. Collectively, this work provides insights into phenological trends and establishes a field-based dataset for FPP, offering a starting point for future research in species-specific classification or ecological monitoring. It emphasizes the value of combining remote sensing, field surveys, and interactive data products to improve understanding of forest vegetation dynamics and their responses to climate change.

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