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Effect of hyper-parameters on the performance of ConvLSTM based deep neural network in crop classification

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Listed:
  • Awab ur Rashid Durrani
  • Nasru Minallah
  • Najam Aziz
  • Jaroslav Frnda
  • Waleed Khan
  • Jan Nedoma

Abstract

Deep learning based data driven methods with multi-sensors spectro-temporal data are widely used for pattern identification and land-cover classification in remote sensing domain. However, adjusting the right tuning for the deep learning models is extremely important as different parameter setting can alter the performance of the model. In our research work, we have evaluated the performance of Convolutional Long Short-Term Memory (ConvLSTM) and deep learning techniques, over various hyper-parameters setting for an imbalanced dataset and the one with highest performance is utilized for land-cover classification. The parameters that are considered for experimentation are; Batch size, Number of Layers in ConvLSTM model, and No of filters in each layer of the ConvLSTM are the parameters that will be considered for our experimentation. Experiments also have been conducted on LSTM model for comparison using the same hyper-parameters. It has been found that the two layered ConvLSTM model having 16-filters and a batch size of 128 outperforms other setting scenarios, with an overall validation accuracy of 97.71%. The accuracy achieved for the LSTM is 93.9% for training and 92.7% for testing.

Suggested Citation

  • Awab ur Rashid Durrani & Nasru Minallah & Najam Aziz & Jaroslav Frnda & Waleed Khan & Jan Nedoma, 2023. "Effect of hyper-parameters on the performance of ConvLSTM based deep neural network in crop classification," PLOS ONE, Public Library of Science, vol. 18(2), pages 1-18, February.
  • Handle: RePEc:plo:pone00:0275653
    DOI: 10.1371/journal.pone.0275653
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