Publication | Open Access
Extracting Raft Aquaculture Areas from Remote Sensing Images via an Improved U-Net with a PSE Structure
78
Citations
35
References
2019
Year
Remote Sensing ImagesConvolutional Neural NetworkEnvironmental MonitoringEngineeringOceanographyUnderwater ImagingRaft Aquaculture AreasImage AnalysisData ScienceUnderwater SensingRov ObservationComputational ImagingPse StructureMachine VisionGeographyRaft Aquaculture ProductsDeep LearningComputer VisionRemote SensingEnvironmental Signal ProcessingRemote Sensing SensorUnmanned Aerial Systems
Remote sensing has become a primary technology for monitoring raft aquaculture products. However, due to the complexity of the marine aquaculture environment, the boundaries of the raft aquaculture areas in remote sensing images are often blurred, which will result in ‘adhesion’ phenomenon in the raft aquaculture areas extraction. The fully convolutional network (FCN) based methods have made great progress in the field of remote sensing in recent years. In this paper, we proposed an FCN-based end-to-end raft aquaculture areas extraction model (which is called UPS-Net) to overcome the ‘adhesion’ phenomenon. The UPS-Net contains an improved U-Net and a PSE structure. The improved U-Net can simultaneously capture boundary and contextual information of raft aquaculture areas from remote sensing images. The PSE structure can adaptively fuse the boundary and contextual information to reduce the ‘adhesion’ phenomenon. We selected laver raft aquaculture areas in eastern Lianyungang in China as the research region to verify the effectiveness of our model. The experimental results show that compared with several state-of-the-art models, the proposed UPS-Net model performs better at extracting raft aquaculture areas and can significantly reduce the ‘adhesion’ phenomenon.
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