Quantitative estimation of soil properties using hybrid features and RNN variants.

Journal: Chemosphere
PMID:

Abstract

Estimating soil properties is important for maximizing the production of crops in sustainable agriculture. The hyperspectral data next input depends upon the previous one, and the current techniques do not take advantage of this sequential nature of hyperspectral signatures. The variants of RNN can learn the short-term and long-term dependencies between data. This paper proposes a deep learning hybrid framework for quantifying the soil minerals like Clay, CEC, pH of HO, Nitrogen, Organic Carbon, Sand of European Union from the LUCAS library. The hyperspectral signatures contain the data in the range of 400-2500 nm captured from the FOSS spectroscope in the laboratory. As hyperspectral data is high dimensional, Principal Component Analysis and Locality Preserving Projections are utilized to form the hybrid features, which have low dimensions containing the local and global information of the original dataset. These hybrid features are passed on to Long Short Term Memory Networks, a deep learning framework for building an effective prediction model. The effectiveness of the prepared models is demonstrated by comparing it to existing state-of-the-art techniques.

Authors

  • Simranjit Singh
    Department of Computer Science and Engineering, Bennett University, Greater Noida, India. Electronic address: simranjit.singh@bennett.edu.in.
  • Singara Singh Kasana
    Computer Science and Engineering Department, Thapar Institute of Engineering and Technology, Patiala, Punjab, India. Electronic address: singara@thapar.edu.