2022
DOI: 10.3390/rs14051267
|View full text |Cite
|
Sign up to set email alerts
|

Water Quality Chl-a Inversion Based on Spatio-Temporal Fusion and Convolutional Neural Network

Abstract: The combination of remote sensing technology and traditional field sampling provides a convenient way to monitor inland water. However, limited by the resolution of remote sensing images and cloud contamination, the current water quality inversion products do not provide both high temporal resolution and high spatial resolution. By using the spatio-temporal fusion (STF) method, high spatial resolution and temporal fusion images were generated with Landsat, Sentinel-2, and GaoFen-2 data. Then, a Chl-a inversion… Show more

Help me understand this report

Search citation statements

Order By: Relevance

Paper Sections

Select...
2
2
1

Citation Types

1
10
0

Year Published

2022
2022
2024
2024

Publication Types

Select...
9

Relationship

0
9

Authors

Journals

citations
Cited by 32 publications
(11 citation statements)
references
References 65 publications
1
10
0
Order By: Relevance
“…Additionally, recurrent neural networks, such as LSTM, and GRU have also gained significant popularity in this field due to their ability to handle sequential data and capture temporal dependencies [22,42,48,194,249,266]. CNNs, such as the well-known convolutional neural network [43,194,220,257,260,262,264,265], the DINCAE [50,255,259], and generative adversarial neural networks (GANs) [277], may not have been widely used, but they have a significant advantage in dealing with spatial dependencies.…”
Section: Machine or Deep Learning Model Choicementioning
confidence: 99%
“…Additionally, recurrent neural networks, such as LSTM, and GRU have also gained significant popularity in this field due to their ability to handle sequential data and capture temporal dependencies [22,42,48,194,249,266]. CNNs, such as the well-known convolutional neural network [43,194,220,257,260,262,264,265], the DINCAE [50,255,259], and generative adversarial neural networks (GANs) [277], may not have been widely used, but they have a significant advantage in dealing with spatial dependencies.…”
Section: Machine or Deep Learning Model Choicementioning
confidence: 99%
“…[64] used UAV images to build a CNN model and obtained an R 2 of 0.79 (RMSE: 8.76), while [65] used Sentinel 2 images and Ada boost regression resulting in a R 2 of 0.90 (RMSE: 1.48). Hafeez et al [20] used ANN achieving an NRMSE of 5.1% (R 2 : 0.87, RMSE: 1.4) while [66] reached an R 2 of 0.88 using CNN and Sentinel 2 and Geo-Fan 2.…”
Section: Monthmentioning
confidence: 99%
“…However, the training of NN models requires a large training dataset, otherwise, they may lead to overfitting or underfitting, which greatly limits the extraction of general rules and the generalization ability of the model [69]. Taking into account that most of the previously analyzed papers used small training data sets, such as 125 [22], 60 [25], 155 [64], and 92 [66] samples, it was expected that the proposed method would have a higher accuracy. In addition, the selection of optimal input data as well as the usage of the large time series covering a wide variety of conditions and an early stopping function [70] to avoid overfitting probably had an impact on the increase in the model accuracy.…”
Section: Monthmentioning
confidence: 99%
“…Therefore, as vegetation is more appropriately described by continuous metrics, flexible and robust methods that can map target vegetation variables (invasive species cover) to a continuous scale rather than a discrete class are urgently needed. Recently, the convolutional neural network-based regression (CNNR) model has also been widely applied in the estimation of continuous metrics across multiple disciplines, achieving promising results and outperforming the traditional regression model [46,[69][70][71][72].…”
Section: Introductionmentioning
confidence: 99%