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Multi-Temporal Hyperspectral Classification of Grassland Using Transformer Network. | LitMetric

Multi-Temporal Hyperspectral Classification of Grassland Using Transformer Network.

Sensors (Basel)

College of Computer and Information Engineering, Inner Mongolia Agricultural University, Hohhot 010018, China.

Published: July 2023

AI Article Synopsis

  • Grassland monitoring is transitioning from traditional surveys to remote sensing, but accuracy remains a challenge; multi-temporal hyperspectral data shows promise for better classification by examining species and growth differences.
  • The study introduces the MHCgT (Multi-temporal Hyperspectral Classification using Transformer networks), which leverages a hierarchical architecture and multi-head self-attention to effectively classify grassland data collected over various growth stages.
  • Results indicate that MHCgT achieved a high accuracy of 98.51%, outperforming other methods like CNN and SVM, highlighting its potential for sustainable grassland management and improving species diversity identification.

Article Abstract

In recent years, grassland monitoring has shifted from traditional field surveys to remote-sensing-based methods, but the desired level of accuracy has not yet been obtained. Multi-temporal hyperspectral data contain valuable information about species and growth season differences, making it a promising tool for grassland classification. Transformer networks can directly extract long-sequence features, which is superior to other commonly used analysis methods. This study aims to explore the transformer network's potential in the field of multi-temporal hyperspectral data by fine-tuning it and introducing it into high-powered grassland detection tasks. Subsequently, the multi-temporal hyperspectral classification of grassland samples using the transformer network (MHCgT) is proposed. To begin, a total of 16,800 multi-temporal hyperspectral data were collected from grassland samples at different growth stages over several years using a hyperspectral imager in the wavelength range of 400-1000 nm. Second, the MHCgT network was established, with a hierarchical architecture, which generates a multi-resolution representation that is beneficial for grass hyperspectral time series' classification. The MHCgT employs a multi-head self-attention mechanism to extract features, avoiding information loss. Finally, an ablation study of MHCgT and comparative experiments with state-of-the-art methods were conducted. The results showed that the proposed framework achieved a high accuracy rate of 98.51% in identifying grassland multi-temporal hyperspectral which outperformed CNN, LSTM-RNN, SVM, RF, and DT by 6.42-26.23%. Moreover, the average classification accuracy of each species was above 95%, and the August mature period was easier to identify than the June growth stage. Overall, the proposed MHCgT framework shows great potential for precisely identifying multi-temporal hyperspectral species and has significant applications in sustainable grassland management and species diversity assessment.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10385388PMC
http://dx.doi.org/10.3390/s23146642DOI Listing

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