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Semantic Segmentation of Urban Buildings Using a High-Resolution Network (HRNet) with Channel and Spatial Attention Gates

Seonkyeong Seong, Jaewan Choi

2021Remote Sensing76 citationsDOIOpen Access PDF

Abstract

In this study, building extraction in aerial images was performed using csAG-HRNet by applying HRNet-v2 in combination with channel and spatial attention gates. HRNet-v2 consists of transition and fusion processes based on subnetworks according to various resolutions. The channel and spatial attention gates were applied in the network to efficiently learn important features. A channel attention gate assigns weights in accordance with the importance of each channel, and a spatial attention gate assigns weights in accordance with the importance of each pixel position for the entire channel. In csAG-HRNet, csAG modules consisting of a channel attention gate and a spatial attention gate were applied to each subnetwork of stage and fusion modules in the HRNet-v2 network. In experiments using two datasets, it was confirmed that csAG-HRNet could minimize false detections based on the shapes of large buildings and small nonbuilding objects compared to existing deep learning models.

Topics & Concepts

Computer scienceChannel (broadcasting)SegmentationSubnetworkArtificial intelligencePattern recognition (psychology)Computer visionTelecommunicationsComputer networkRemote Sensing and LiDAR ApplicationsAutomated Road and Building ExtractionRemote-Sensing Image Classification