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JPSSL: SAR Terrain Classification Based on Jigsaw Puzzles and FC-CRF
by
Sha, Feng
, Lu, Yiming
, Ren, Zhongle
, Hou, Biao
, Li, Weibin
in
Algorithms
/ Artificial intelligence
/ Classification
/ Comparative analysis
/ Conditional random fields
/ Deep learning
/ geometry
/ image interpretation
/ Image processing
/ Image resolution
/ jigsaw puzzle
/ Jigsaw puzzles
/ landscapes
/ Machine learning
/ Methods
/ Neural networks
/ Puzzles
/ Radar imaging
/ Remote sensing
/ Self-supervised learning
/ Semantics
/ Synthetic aperture radar
/ synthetic aperture radar (SAR)
/ Technology application
/ Terrain
/ terrain classification
/ Wavelet transforms
2024
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JPSSL: SAR Terrain Classification Based on Jigsaw Puzzles and FC-CRF
by
Sha, Feng
, Lu, Yiming
, Ren, Zhongle
, Hou, Biao
, Li, Weibin
in
Algorithms
/ Artificial intelligence
/ Classification
/ Comparative analysis
/ Conditional random fields
/ Deep learning
/ geometry
/ image interpretation
/ Image processing
/ Image resolution
/ jigsaw puzzle
/ Jigsaw puzzles
/ landscapes
/ Machine learning
/ Methods
/ Neural networks
/ Puzzles
/ Radar imaging
/ Remote sensing
/ Self-supervised learning
/ Semantics
/ Synthetic aperture radar
/ synthetic aperture radar (SAR)
/ Technology application
/ Terrain
/ terrain classification
/ Wavelet transforms
2024
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JPSSL: SAR Terrain Classification Based on Jigsaw Puzzles and FC-CRF
by
Sha, Feng
, Lu, Yiming
, Ren, Zhongle
, Hou, Biao
, Li, Weibin
in
Algorithms
/ Artificial intelligence
/ Classification
/ Comparative analysis
/ Conditional random fields
/ Deep learning
/ geometry
/ image interpretation
/ Image processing
/ Image resolution
/ jigsaw puzzle
/ Jigsaw puzzles
/ landscapes
/ Machine learning
/ Methods
/ Neural networks
/ Puzzles
/ Radar imaging
/ Remote sensing
/ Self-supervised learning
/ Semantics
/ Synthetic aperture radar
/ synthetic aperture radar (SAR)
/ Technology application
/ Terrain
/ terrain classification
/ Wavelet transforms
2024
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JPSSL: SAR Terrain Classification Based on Jigsaw Puzzles and FC-CRF
Journal Article
JPSSL: SAR Terrain Classification Based on Jigsaw Puzzles and FC-CRF
2024
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Overview
Effective features play an important role in synthetic aperture radar (SAR) image interpretation. However, since SAR images contain a variety of terrain types, it is not easy to extract effective features of different terrains from SAR images. Deep learning methods require a large amount of labeled data, but the difficulty of SAR image annotation limits the performance of deep learning models. SAR images have inevitable geometric distortion and coherence speckle noise, which makes it difficult to extract effective features from SAR images. If effective semantic context features cannot be learned for SAR images, the extracted features struggle to distinguish different terrain categories. Some existing terrain classification methods are very limited and can only be applied to some specified SAR images. To solve these problems, a jigsaw puzzle self-supervised learning (JPSSL) framework is proposed. The framework comprises a jigsaw puzzle pretext task and a terrain classification downstream task. In the pretext task, the information in the SAR image is learned by completing the SAR image jigsaw puzzle to extract effective features. The terrain classification downstream task is trained using only a small number of labeled data. Finally, fully connected conditional random field processing is performed to eliminate noise points and obtain a high-quality terrain classification result. Experimental results on three large-scene high-resolution SAR images confirm the effectiveness and generalization of our method. Compared with the supervised methods, the features learned in JPSSL are highly discriminative, and the JPSSL achieves good classification accuracy when using only a small amount of labeled data.
Publisher
MDPI AG
Subject
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