LULC Segmentation of RGB Satellite Image Using FCN-8
This work presents use of Fully Convolutional Network (FCN-8) for semantic segmentation of high-resolution RGB earth surface satel-lite images into land use land cover (LULC) categories. Specically, we propose a non-overlapping grid-based approach to train a Fully Convo-lutional Network (FCN-8) with...
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Zusammenfassung: | This work presents use of Fully Convolutional Network (FCN-8) for semantic
segmentation of high-resolution RGB earth surface satel-lite images into land
use land cover (LULC) categories. Specically, we propose a non-overlapping
grid-based approach to train a Fully Convo-lutional Network (FCN-8) with vgg-16
weights to segment satellite im-ages into four (forest, built-up, farmland and
water) classes. The FCN-8 semantically projects the discriminating features in
lower resolution learned by the encoder onto the pixel space in higher
resolution to get a dense classi cation. We experimented the proposed system
with Gaofen-2 image dataset, that contains 150 images of over 60 di erent
cities in china. For comparison, we used available ground-truth along with
images segmented using a widely used commeriial GIS software called
eCogni-tion. With the proposed non-overlapping grid-based approach, FCN-8
obtains signi cantly improved performance, than the eCognition soft-ware. Our
model achieves average accuracy of 91.0% and average Inter-section over Union
(IoU) of 0.84. In contrast, eCognitions average accu-racy is 74.0% and IoU is
0.60. This paper also reports a detail analysis of errors occurred at the LULC
boundary. |
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DOI: | 10.48550/arxiv.2008.10736 |