核心概念
A static algorithm that combines textural and spectral features from Sentinel-2 satellite imagery can effectively classify forest regions separately from non-forest vegetation.
要約
The paper presents a static algorithmic approach to classify forest regions separately from non-forest vegetation in Sentinel-2 satellite imagery. The key steps are:
- Obtain the RGB image from the Sentinel-2 data.
- Apply Laplacian edge detection to create a texture mask that highlights areas of high and low texture.
- Calculate the NDVI (Normalized Difference Vegetation Index) to create a vegetation mask.
- Combine the texture mask and vegetation mask to identify pixels that are likely forest vegetation.
The algorithm was tested on a sample scene around Keating Lake in Ontario, Canada and compared to the DetecTree open-source tree detection method. The results show the static algorithm outperforming DetecTree in accurately classifying forest regions, though the ground-truth data used for comparison had some limitations.
The paper identifies next steps to further improve the accuracy of the classification, such as creating a more comprehensive feature bank and testing on a wider variety of terrain types. Overall, the work demonstrates that a simple combination of textural and spectral features can provide an effective way to separate forests from other vegetation in satellite imagery.
統計
The Sentinel-2 satellite imagery used in this study is captured from a mean altitude of 786km with an orbital swath of 290km.
The ground-truth data used for comparison is from the Forest Resources Inventory leaf-on LiDAR Landcover data provided by the Ontario Natural Resources and Forestry Ministry, last updated in April 2023.
引用
"Compared to more complex classification techniques, this paper presents evidence that a simple, easy-to-understand static algorithm that combines textural and spectral data can produce high-quality results."
"Visually, it is clear that DetecTree is missing areas of forest (this is especially notable in the top-right quadrant), and is not accurately classifying the lake region, while the static algorithm is performing extremely well for this scene from a visual inspection."