Abstract

Cloud detection is one of the essential procedures in optical remote sensing image processing because clouds are widely distributed in remote sensing images and cause a lot of challenges, such as climate research and object detection. In this article, a lightweight deep-learning-based framework is proposed to detect cloud in remote sensing imagery. First, a multiple features fusion strategy is designed to extract learnable manual features and convolution features from visible and near-infrared bands. Then, a lightweight fully convolutional neural network (ClouDet) with a microarchitecture named dilated separable convolutional module is used to extract the multiscale contextual information and gradually recovers segmentation results with the same size as input image, which is more effective for large-scale cloud detection with larger receptive field, less parameters, and lower compute complexity. Third, context pooling is designed to amend the possible misjudgments. Visual and quantitative comparison experiments are conducted on several public cloud detection datasets, which indicates that our proposed method can accurately detect clouds under different conditions, which is more effective and accurate than the compared state-of-the-art methods.

Highlights

  • Optical remote sensing imagery has become one of the most valuable data sources for monitoring changes in the ecological environment, land types and human’s impact on the surface

  • In view of that the cloud-snow coexistence makes it difficult to detect clouds in remote sensing imagery, Guo and Yang et al [25] proposed an improved version of cloud detection neural network (CDnet) based on adaptive feature fusing model and high-level semantic information guidance flows, which achieved accurate detection performance on the ZY-3 satellite thumbnail dataset

  • We proposed a novel method to identify cloud regions and separate them from non-cloud regions in optical remote sensing imagery

Read more

Summary

INTRODUCTION

Optical remote sensing imagery has become one of the most valuable data sources for monitoring changes in the ecological environment, land types and human’s impact on the surface. In view of that the cloud-snow coexistence makes it difficult to detect clouds in remote sensing imagery, Guo and Yang et al [25] proposed an improved version of CDnet based on adaptive feature fusing model and high-level semantic information guidance flows, which achieved accurate detection performance on the ZY-3 satellite thumbnail dataset. Our proposed method is an end-to-end fully convolutional neural network, which detect clouds in pixel-scale This network named ClouDet consists of microarchitecture named dilated separable convolutional module, multiple feature generation layer and context pooling layer. The contributions of this paper are as follows: 1) Proposing ClouDet, a light weighted CNN-based cloud detection framework for remote sensing imagery, which provides a solution for efficient and accurate cloud detection tasks on embedded platforms, such as satellites.

PROPOSED METHOD
Landsat 8
ClouDet
Multiple Features Fusion Strategy
C W H C2 W H
Channel Screening
Dilated Separable Convolution
Bottleneck
Segmentation Model
Datasets
Evaluation Criteria
Baseline Methods
Implementation Details
Experiment Result
CONCLUSIONS
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call