Author/Authors :
Fathi, Mahdiyeh School of Surveying and Geospatial Engineering - College of Engineering - University of Tehran, Tehran, Iran , Shah-Hosseini, Reza School of Surveying and Geospatial Engineering - College of Engineering - University of Tehran, Tehran, Iran
Abstract :
Rice is the main food for the world's people. Monitoring and mapping rice fields play an important role in
agricultural planning. Nowadays, intelligent management of rice fields has improved by remote sensing
technology and deep learning algorithms. This research aims to study is the Fusion in-Decoder model and
Data Augmentation techniques by using extracted multi-temporal maps of NDVI, LST, and LSWI indices
from Landsat-8 images for mapping rice fields at the state of California, in 2020. Therefore, six
architectures of Fusion in-Decoder model were designed, after radiometric corrections, atmospheric
corrections, and generate multi-temporal maps of NDVI, LST, and LSWI indices, and simulation of
different phenologies of rice crop with the shift of multi-temporal indices and PCA algorithm: (1) One
Encoder-one Decoder (NDVI) and use of Data Augmentation techniques by the shift of multi-temporal
indices and PCA algorithm, (2) Two Encoders-one Decoder (NDVI-LST) and use of Data Augmentation
techniques by the shift of multi-temporal indices and PCA algorithm, (3) Two Encoders-one Decoder
(NDVI-LSWI) and use of Data Augmentation techniques by the shift of multi-temporal indices and PCA
algorithm, (4) Three Encoders-Decoder (NDVI-LST-LSWI) and use of Data Augmentation techniques by
the shift of multi-temporal indices and PCA algorithm, (5) Three Encoders-one Decoder (NDVI-LST-
LSWI) and use of Data Augmentation technique by the shift of multi-temporal indices, and (6) Three
Encoders-one Decoder (NDVI-LST-LSWI) without the use of Data Augmentation techniques. The fusion
in-decoder and Data Augmentation techniques compared with four classifiers Decision Tree (DT),
Logistic Regression (LR), Multi-Layer Perceptron (MLP), and Auto-Encoder (AE). The results showed
that the Fusion in-Decoder model with three Encoders-one Decoder (NDVI-LST-LSWI) and use of Data
Augmentation techniques by the shift of multi-temporal indices and PCA algorithm performed best with
Kappa coefficient (89/85%) for multi-temporal images of months April to August at the state of California.
Besides, among the comparison classifiers, AE showed the worst result with Kappa coefficient (31.88%).
Keywords :
Rice Identification , Landsat-8 , Data Augmentation , Fusion in-Decoder , LST