Abstract

Coastal land cover classification is a significant yet challenging task in remote sensing because of the complex and fragmented nature of coastal landscapes. However, availability of multitemporal and multisensor remote sensing data provides opportunities to improve classification accuracy. Meanwhile, rapid development of deep learning has achieved astonishing results in computer vision tasks and has also been a popular topic in the field of remote sensing. Nevertheless, designing an effective and concise deep learning model for coastal land cover classification remains problematic. To tackle this issue, we propose a multibranch convolutional neural network (MBCNN) for the fusion of multitemporal and multisensor Sentinel data to improve coastal land cover classification accuracy. The proposed model leverages a series of deformable convolutional neural networks to extract representative features from a single-source dataset. Extracted features are aggregated through an adaptive feature fusion module to predict final land cover categories. Experimental results indicate that the proposed MBCNN shows good performance, with an overall accuracy of 93.78% and a Kappa coefficient of 0.9297. Inclusion of multitemporal data improves accuracy by an average of 6.85%, while multisensor data contributes to 3.24% of accuracy increase. Additionally, the featured fusion module in this study also increases accuracy by about 2% when compared with the feature-stacking method. Results demonstrate that the proposed method can effectively mine and fuse multitemporal and multisource Sentinel data, which improves coastal land cover classification accuracy.

Highlights

  • Coastal regions play an important role in social and economic development around the globe [1,2,3,4,5]

  • From the perspective of visual inspection, the results showed good visual effect, and the spatial distributions of each classified land cover were close to field survey records

  • This paper proposed a multibranch convolutional neural network for fusion of multitemporal and multisensor Sentinel data for coastal land cover classification

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Summary

Introduction

Coastal regions play an important role in social and economic development around the globe [1,2,3,4,5]. Due to anthropogenic activities and global climate change, coastal regions have experienced rapid land cover changes over the last few decades [4,5]. Accurate and timely monitoring of coastal regions by means of remote sensing is of great significance to regional, sustainable development. Accurate land cover classification of complex coastal regions is a challenging task [2,6,7,8]. The highly fragmented landscape of coastal regions leads to large variations in the shape and scale of land objects, which increases the interclass variability and decreases the intraclass similarity. Some vegetation classes (e.g., grassland and cropland) may have overlapping spectral reflectance at peak biomass, which raises difficulties in accurate classification

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