ACLNet: An Attention and Clustering-based Cloud Segmentation Network
volume 13, pages 865-875, year 2022 We propose a novel deep learning model named ACLNet, for cloud segmentation from ground images. ACLNet uses both deep neural network and machine learning (ML) algorithm to extract complementary features. Specifically, it uses EfficientNet-B0 as the backbone, "...
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Zusammenfassung: | volume 13, pages 865-875, year 2022 We propose a novel deep learning model named ACLNet, for cloud segmentation
from ground images. ACLNet uses both deep neural network and machine learning
(ML) algorithm to extract complementary features. Specifically, it uses
EfficientNet-B0 as the backbone, "`a trous spatial pyramid pooling" (ASPP) to
learn at multiple receptive fields, and "global attention module" (GAM) to
extract finegrained details from the image. ACLNet also uses k-means clustering
to extract cloud boundaries more precisely. ACLNet is effective for both
daytime and nighttime images. It provides lower error rate, higher recall and
higher F1-score than state-of-art cloud segmentation models. The source-code of
ACLNet is available here: https://github.com/ckmvigil/ACLNet. |
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DOI: | 10.48550/arxiv.2207.06277 |