TL;DR
MAP-Net is a novel neural network architecture that effectively extracts multiscale building footprints from remote sensing imagery, improving boundary accuracy and continuity over existing methods.
Contribution
The paper introduces MAP-Net, which preserves multiscale spatial features and employs attention and pyramid pooling modules for enhanced building footprint extraction.
Findings
Outperforms state-of-the-art algorithms in boundary localization and building continuity.
Achieves significant precision and IoU improvements on multiple datasets.
Maintains computational efficiency comparable to existing models.
Abstract
Accurately and efficiently extracting building footprints from a wide range of remote sensed imagery remains a challenge due to their complex structure, variety of scales and diverse appearances. Existing convolutional neural network (CNN)-based building extraction methods are complained that they cannot detect the tiny buildings because the spatial information of CNN feature maps are lost during repeated pooling operations of the CNN, and the large buildings still have inaccurate segmentation edges. Moreover, features extracted by a CNN are always partial which restricted by the size of the respective field, and large-scale buildings with low texture are always discontinuous and holey when extracted. This paper proposes a novel multi attending path neural network (MAP-Net) for accurately extracting multiscale building footprints and precise boundaries. MAP-Net learns spatial…
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