An efficient method for cloud detection based on the feature-level fusion of Landsat-8 OLI spectral bands in deep convolutional neural network

Authors

Abstract:

Cloud segmentation is a critical pre-processing step for any multi-spectral satellite image application. In particular, disaster-related applications e.g., flood monitoring or rapid damage mapping, which are highly time and data-critical, require methods that produce accurate cloud masks in a short time while being able to adapt to large variations in the target domain (induced by atmospheric conditions, different sensors, and scene properties). This research presented a deep convolutional neural network for cloud detection in the Landsat-8 dataset at the pixel level. Two key components of the proposed network are convolutional layers in the decoder branch with two convolution kernels in various scales. The near-infrared band in this study was added to the network inputs, including red, green, and blue bands, to improve the network performance. In the proposed network architecture, the encoder-decoder branches symmetrically with the density of feature maps resulting from the multiplicity of filters and the design of multi-dimension filters, providing a local and general context for accurate identification of the cloud and its margins to extracted spatial features in high-level scales are used. However, Multi-scales feature maps will be sampled and integrated and used to generate output with high accuracy. Finally, the proposed method uses 3500 patches of Landsat-8 satellite images with various cloud challenges by using several kernels in sizes 3 x 3 and 5 x 5 with an F1-score of 96.6 and a Jaccard index (JI) of 93.5 provides higher accuracy than other methods. In general, the suggested method outperformed the alternatives in the same, uncorrected data set in terms of accuracy, particularly in regions with bright surfaces. Due to the effectiveness of the proposed framework, it has a lot of potential for practical application with different types of satellite images.

Download for Free

Sign up for free to access the full text

Already have an account?login

similar resources

Spectral normalization between Landsat-8/OLI, Landsat- 7/ETM+ and CBERS-4/MUX bands through linear regression and spectral unmixing

Monitoring changes on Earth's surface is a difficult task commonly performed using multi-spectral remote sensing. The increasing availability of remote sensing platforms providing data makes multi-source approaches promising, since it can increase temporal revisit rate. However, Digital image processing techniques are needed to integrate the data, since sensors can be quite different in terms o...

full text

A multi-scale convolutional neural network for automatic cloud and cloud shadow detection from Gaofen-1 images

The reconstruction of the information contaminated by cloud and cloud shadow is an important step in pre-processing of high-resolution satellite images. The cloud and cloud shadow automatic segmentation could be the first step in the process of reconstructing the information contaminated by cloud and cloud shadow. This stage is a remarkable challenge due to the relatively inefficient performanc...

full text

An Effective Training Method For Deep Convolutional Neural Network

We present a training method to speed up the training and improve the performance of deep convolutional neural networks (CNN). We propose a nonlinearity generator, which makes the deep CNN as a linear model in the initial state, and then introduces nonlinearity during the training procedure to improve the model capacity. We theoretically show that the mean shift problem in the neural network ma...

full text

The Ground-Based Absolute Radiometric Calibration of Landsat 8 OLI

This paper presents the vicarious calibration results of Landsat 8 OLI that were obtained using the reflectance-based approach at test sites in Nevada, California, Arizona, and South Dakota, USA. Additional data were obtained using the Radiometric Calibration Test Site, which is a suite of instruments located at Railroad Valley, Nevada, USA. The results for the top-of-atmosphere spectral radian...

full text

Pedestrian Detection with Deep Convolutional Neural Network

The problem of pedestrian detection in image and video frames has been extensively investigated in the past decade. However, the low performance in complex scenes shows that it remains an open problem. In this paper, we propose to cascade simple Aggregated Channel Features (ACF) and rich Deep Convolutional Neural Network (DCNN) features for efficient and effective pedestrian detection in comple...

full text

Double-Star Detection Using Convolutional Neural Network in Atmospheric Turbulence

In this paper, we investigate the usage of machine learning in the detection and recognition of double stars. To do this, numerous images including one star and double stars are simulated. Then, 100 terms of Zernike expansion with random coefficients are considered as aberrations to impose on the aforementioned images. Also, a telescope with a specific aperture is simulated. In this work, two k...

full text

My Resources

Save resource for easier access later

Save to my library Already added to my library

{@ msg_add @}


Journal title

volume 10  issue 3

pages  49- 70

publication date 2023-02

By following a journal you will be notified via email when a new issue of this journal is published.

Keywords

No Keywords

Hosted on Doprax cloud platform doprax.com

copyright © 2015-2023