Remote sensing (RS) data and crop classification
techniques provide useful information for crop yield estimation and prediction.
Deep learning (DL) has seen a massive rise in popularity for remote sensing
(RS)-based applications over the past few years. However, the performance of DL
algorithms is dependent on the optimization of various hyperparameters since
the hyperparameters have a huge impact on the performance of deep neural
networks. The impact of hyperparameters on the accuracy and reliability of DL
models is a significant area for investigation. The study region Charsadda is
located in the Khyber Pakhtunkhwa, province of Pakistan. Five dates were chosen
for satellite imagery in this investigation to capture the reflectance of crops
at various growth stages. In this study, the grid Search algorithm is used for
hyperparameters optimization of long short-term memory (LSTM) network for the
RS-based classification. The hyperparameters considered for this study are
optimizer, activation function, batch size, and the number of LSTM layers. In
this study, over 1,000 hyperparameter sets are evaluated and the results of all
the sets are analyzed to see the effects of various combinations of
hyperparameters as well as the individual parameter effect on the performance
of the LSTM model. The performance of the LSTM model is evaluated using the
performance metric of minimum loss and average loss and it was found that
classification can be highly affected by the choice of optimizer; however,
other parameters such as the number of LSTM layers have less influence. This
study shows that tuning the hyperparameters improves the model performance. The
LSTM model for RS data yields the best performance with Adam, Nadam, RMSProp,
and Adamax optimizers whereas it does not perform well with SGD, Adagrad, and
Adadelta.
Author(s) Details:
Nasru
Minallah
Department of Computer Systems Engineering, National Center
for Big Data and Cloud Computing (NCBC), University of Engineering and
Technology Peshawar, Peshawar, Pakistan.
Madiha Sher
Department of Computer Systems Engineering, University of
Engineering and Technology Peshawar, Peshawar, Pakistan
Tufail
Ahmad
Department of Computer Sciences, National Center for Big Data
and Cloud Computing (NCBC), University of Engineering and Technology Peshawar,
Peshawar, Pakistan.
Waleed Khan
Department of Computer Systems Engineering, National Center
for Big Data and Cloud Computing (NCBC), University of Engineering and
Technology Peshawar, Peshawar, Pakistan.
Please see the link here: https://doi.org/10.9734/bpi/caert/v2/7320C
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