2024
DOI: 10.1038/s41598-024-60066-x
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Improved random forest classification model combined with C5.0 algorithm for vegetation feature analysis in non-agricultural environments

Tianyu Wang

Abstract: In response to the challenges posed by the high computational complexity and suboptimal classification performance of traditional random forest algorithms when dealing with high-dimensional and noisy non-agricultural vegetation satellite data, this paper proposes an enhanced random forest algorithm based on the C5.0 algorithm. The paper focuses on the Liaohe Plain, selecting two distinct non-agricultural landscape patterns in Shenbei New District and Changtu County as research objects. High-resolution satellit… Show more

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