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Adaptive Filtering Remote Sensing Image Segmentation Network based on Attention Mechanism

Authors

Cong zhong Wu1, Hao Dong1, Xuan jie Lin1, Han tong Jiang1, Li quan Wang1, Xin zhi Liu1 and Wei kai Shi2, 1Hefei University of Technology, P.R.China, 2Macau University of Science and Technology, P.R.China

Abstract

It is difficult to segment small objects and the edge of the object because of larger-scale variation, larger intra-class variance of background and foreground-background imbalance in the remote sensing imagery. In convolutional neural networks, high frequency signals may degenerate into completely different ones after downsampling. We define this phenomenon as aliasing. Meanwhile, although dilated convolution can expand the receptive field of feature map, a much more complex background can cause serious alarms. To alleviate the above problems, we propose an attention-based mechanism adaptive filtered segmentation network. Experimental results on the Deepglobe Road Extraction dataset and Inria Aerial Image Labeling dataset showed that our method can effectively improve the segmentation accuracy. The F1 value on the two data sets reached 82.67% and 85.71% respectively.

Keywords

Convolutional Neural Network, Remote Sensing Imagery Segmentation, Adaptive Filter, Attention Mechanism, Feature Fusion.

Full Text  Volume 11, Number 9