IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing (Jan 2022)

LCDNet: Light-Weighted Cloud Detection Network for High-Resolution Remote Sensing Images

  • Kai Hu,
  • Dongsheng Zhang,
  • Min Xia,
  • Ming Qian,
  • Binyu Chen

DOI
https://doi.org/10.1109/JSTARS.2022.3181303
Journal volume & issue
Vol. 15
pp. 4809 – 4823

Abstract

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Cloud detection is one of the important links in high-resolution remote sensing image processing. Cloud detection methods can be mainly divided into the following three categories: threshold methods, clustering methods based on machine learning, and deep learning methods. The traditional threshold method needs cumbersome manual calibration, which has high cost and poor universality. The generalization of clustering-based method is very poor. In addition, existing deep learning methods tend to have many model parameters and high training costs. To solve the abovementioned problems, a light-weighted cloud detection network (LCDNet) based on deep learning method is proposed. The network can complete the task of high-precision segmentation with less parameters and computation. Its light-weighted bottleneck layer can quickly capture the multiscale feature information in the image and segment the cloud with high efficiency. The gated channel excitation module can effectively reduce the feature redundancy in the network, so as to highlight the details of the cloud layer and improve the detection accuracy. The function of light-weighted self attention module is to quickly establish the spatial location information in the feature map, so as to locate the unpredictable targets and reduce the false detection rate. The experimental results show that the model shows an excellent performance on cloud and cloud shadow datasets with 353.76 k parameters and 456.28 Mmac computation. In addition, the training results on GF1_WHU and L8 Biome datasets further show that our model has an excellent generalization performance, which is of great significance for the efficient implementation of cloud detection.

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