2021
DOI: 10.3390/rs13040731
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MFANet: A Multi-Level Feature Aggregation Network for Semantic Segmentation of Land Cover

Abstract: Detailed information regarding land utilization/cover is a valuable resource in various fields. In recent years, remote sensing images, especially aerial images, have become higher in resolution and larger span in time and space, and the phenomenon that the objects in an identical category may yield a different spectrum would lead to the fact that relying on spectral features only is often insufficient to accurately segment the target objects. In convolutional neural networks, down-sampling operations are usua… Show more

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Cited by 74 publications
(31 citation statements)
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“…Under the assumption that both local data and local models are available, a probabilistic FL framework is developed and studied, with special emphasis on training and aggregation neural network models. Estimated local model parameters (in the case of a neural network, a set of weight vectors) between data sources are matched to build a global network [43,44]. When the data are available, the method is proposed by training the local model for each data source in parallel.…”
Section: Federated Bayesian Networkmentioning
confidence: 99%
“…Under the assumption that both local data and local models are available, a probabilistic FL framework is developed and studied, with special emphasis on training and aggregation neural network models. Estimated local model parameters (in the case of a neural network, a set of weight vectors) between data sources are matched to build a global network [43,44]. When the data are available, the method is proposed by training the local model for each data source in parallel.…”
Section: Federated Bayesian Networkmentioning
confidence: 99%
“…In this way, not only the original backbone network feature information and the hidden layer feature information extracted from the original SAFT module are retained, but also the backbone network feature map containing the spatial semantic information of the hidden layer is added. Through the GFR module, different types of feature images can be fused [35], which can help to further improve the segmentation accuracy. The calculation and derivation process of GFR is shown in Equation ( 8):…”
Section: Global Feature Refinement Modulementioning
confidence: 99%
“…To further improve the detection performance of detecting objects in difficult conditions based multiscale features, multilayer proposal [8] applied a deconvolution module to a lightweight architecture to generate enhanced feature map which can improve small object detection. MFANet [9] proposed a multilevel feature aggregation network which first extracts the deep features and filters the redundant channel information to optimize the learned context and then uses high-level features to provide guidance information for low-level features. In DAU-Net [10], deep feature information is fused with shallow feature information through multiscale attention modules to improve to the accuracy of water segmentation.…”
Section: Deep Cnn Detection Framework Based On Multilayermentioning
confidence: 99%