4.7 Article

Determining the Capability of the Tree-Based Pipeline Optimization Tool (TPOT) in Mapping Parthenium Weed Using Multi-Date Sentinel-2 Image Data

期刊

REMOTE SENSING
卷 14, 期 7, 页码 -

出版社

MDPI
DOI: 10.3390/rs14071687

关键词

parthenium weed; multi-date image; single-date; hybrid feature selection method; TPOT

资金

  1. University of KwaZulu-Natal
  2. DST/NRF [84157]

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This study tested the effectiveness of the Tree-based Pipeline Optimization Tool (TPOT) in handling high-dimensional datasets and compared the classification models created using TPOT and an algorithm system that combines feature selection and TPOT. The results showed that TPOT performed well on data with large feature sets but at a high computational cost.
The Tree-based Pipeline Optimization Tool (TPOT) is a state-of-the-art automated machine learning (AutoML) approach that automatically generates and optimizes tree-based pipelines using a genetic algorithm. Although it has been proven to outperform commonly used machine techniques, its capability to handle high-dimensional datasets has not been investigated. In vegetation mapping and analysis, multi-date images are generally high-dimensional datasets that contain embedded information, such as phenological and canopy structural properties, known to enhance mapping accuracy. However, without the implementation of a robust classification algorithm or a feature selection tool, the large sets and the presence of redundant variables in multi-date images can impede accurate and efficient landscape classification. Hence, this study sought to test the efficacy of the TPOT on a multi-date Sentinel-2 image to optimize the classification accuracies of a landscape infested by a noxious invasive plant species, the parthenium weed (Parthenium hysterophorus). Specifically, the models created from the multi-date image, using the TPOT and an algorithm system that combines feature selection and the TPOT, dubbed ReliefF-Svmb-EXT-TPOT, were compared. The results showed that the TPOT could perform well on data with large feature sets, but at a computational cost. The overall accuracies were 91.9% and 92.6% using the TPOT and ReliefF-Svmb-EXT-TPOT models, respectively. The study findings are crucial for automated and accurate mapping of parthenium weed using high-dimensional geospatial datasets with limited human intervention.

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