Abstract
Remote sensing technology is widely used for the dynamic monitoring of Enteromorpha prolifera (EP) blooms due to its high temporal resolution and large scale monitoring. Recently, deep learning(DL) methods have been applied to EP analysis due to their excellent feature representation. However, EP information extraction methods based on DL from low-spatial-resolution satellite images are still immature. The main problems with such methods include the insufficiency of spectral and spatial feature learning in low-resolution satellite images, as well as the sample imbalance that DL-based neural networks face in EP information extraction. To solve the above problems, a neural network-based EP extraction method considering sample balance is proposed in this article and named EP rough-then-accurate extraction network. The method consists of two components: EP rough extraction, a strategy that attends to sample balance, and EP accurate extraction, a deep neural network based on one-dimensional convolutional neural network and bidirectional long short-term memory (Bi-LSTM), which fully considers the learned spectral information of each pixel and interpixel contextual dependencies. Geostationary Ocean Color Imager images with 500-m resolution were applied as the LR images in the experiments. The experimental results show that the proposed method has the capability to enhance adaptability in areas with different EP densities (achieving stable and excellent performance) and exhibits at least a 10% gain in F1-score and at least a 6% gain in IoU in extracting EP coverage information over other representative and traditional EP extraction methods in the Yellow Sea region.
Highlights
M assive Enteromorpha prolifera (EP) blooms have occurred frequently in China’s coastal areas in recent years [1,2]
Some experiments [8,17] showed that the accuracies of the vegetation index-based thresholding methods for EP extraction varied with the change in EP coverage densities, which led to an adaptability limitation of the single vegetation index with respect to extracting EP coverage information
The method mainly consists of two components: EP rough extraction (EPRE), a strategy that attends to sample balance, and EP accurate extraction (EPAE), a deep neural network based on one-dimensional convolutional neural network (1D-Convolutional neural networks (CNNs)) and bidirectional long short-term memory (Bi-LSTM), which fully considers the captured spectral information of each pixel and interpixel contextual characteristics
Summary
M assive Enteromorpha prolifera (EP) blooms have occurred frequently in China’s coastal areas in recent years [1,2]. The method mainly consists of two components: EP rough extraction (EPRE), a strategy that attends to sample balance, and EP accurate extraction (EPAE), a deep neural network based on one-dimensional convolutional neural network (1D-CNN) and bidirectional long short-term memory (Bi-LSTM), which fully considers the captured spectral information of each pixel and interpixel contextual characteristics. The aim of this study is to propose a novel EP extraction method for solving the difficulty encountered in traditional vegetation index-based thresholding methods, the imbalance of DL samples, and the insufficiency of 2D-CNNs to address spatial and spectral feature learning in LR satellite images. The process of this approach involves two steps:. The GOCI images of the five subregions were cut into the same size of 32 × 32, and the corresponding labels were determined by visual interpretation
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More From: IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing
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