Multi-scale semantic segmentation and spatial relationship recognition of remote sensing images based on an attention model

W Cui, F Wang, X He, D Zhang, X Xu, M Yao, Z Wang… - Remote Sensing, 2019 - mdpi.com
W Cui, F Wang, X He, D Zhang, X Xu, M Yao, Z Wang, J Huang
Remote Sensing, 2019mdpi.com
A comprehensive interpretation of remote sensing images involves not only remote sensing
object recognition but also the recognition of spatial relations between objects. Especially in
the case of different objects with the same spectrum, the spatial relationship can help
interpret remote sensing objects more accurately. Compared with traditional remote sensing
object recognition methods, deep learning has the advantages of high accuracy and strong
generalizability regarding scene classification and semantic segmentation. However, it is …
A comprehensive interpretation of remote sensing images involves not only remote sensing object recognition but also the recognition of spatial relations between objects. Especially in the case of different objects with the same spectrum, the spatial relationship can help interpret remote sensing objects more accurately. Compared with traditional remote sensing object recognition methods, deep learning has the advantages of high accuracy and strong generalizability regarding scene classification and semantic segmentation. However, it is difficult to simultaneously recognize remote sensing objects and their spatial relationship from end-to-end only relying on present deep learning networks. To address this problem, we propose a multi-scale remote sensing image interpretation network, called the MSRIN. The architecture of the MSRIN is a parallel deep neural network based on a fully convolutional network (FCN), a U-Net, and a long short-term memory network (LSTM). The MSRIN recognizes remote sensing objects and their spatial relationship through three processes. First, the MSRIN defines a multi-scale remote sensing image caption strategy and simultaneously segments the same image using the FCN and U-Net on different spatial scales so that a two-scale hierarchy is formed. The output of the FCN and U-Net are masked to obtain the location and boundaries of remote sensing objects. Second, using an attention-based LSTM, the remote sensing image captions include the remote sensing objects (nouns) and their spatial relationships described with natural language. Finally, we designed a remote sensing object recognition and correction mechanism to build the relationship between nouns in captions and object mask graphs using an attention weight matrix to transfer the spatial relationship from captions to objects mask graphs. In other words, the MSRIN simultaneously realizes the semantic segmentation of the remote sensing objects and their spatial relationship identification end-to-end. Experimental results demonstrated that the matching rate between samples and the mask graph increased by 67.37 percentage points, and the matching rate between nouns and the mask graph increased by 41.78 percentage points compared to before correction. The proposed MSRIN has achieved remarkable results.
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