1. MPGSE-D-LinkNet: Multiple-Parameters-Guided Squeeze-and-Excitation Integrated D-LinkNet for Road Extraction in Remote Sensing Imagery.
- Author
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Ai, Jiaqiu, Hou, Shaofan, Wu, Mingyang, Chen, Bin, and Yan, Hao
- Abstract
In road extraction task, traditional squeeze-and-excitation (SE) module only calculates the mean value of each channel to represent the salient features of the roads, but it easily causes false detection due to the interference, such as water, roofs, and so on. This letter specifically proposes a multiple-parameters-guided SE (MPGSE) module for road extraction by incorporating two key parameters of the variance and the coefficient of variation into the SE module. Furthermore, MPGSE module adaptively adjusts the weights of different features to suppress the redundant information while enhancing the informative features, which makes the roads more separable from other disturbances. MPGSE greatly increases the between-class distance and decreases the within-class distance, thus enhancing the separation capability of the road features compared with other interference. In addition, MPGSE module is integrated into D-LinkNet to optimally fuse features, thus further improving the completeness of road feature representation. Undoubtedly, MPGSE integrated D-LinkNet (MPGSE-D-LinkNet) can achieve better road extraction performance than the other methods. The superiority of MPGSE-D-LinkNet is verified on the RoadNet benchmark dataset (RNBD) and Massachusetts road dataset. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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