2024
DOI: 10.3390/rs16050854
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Multiobjective Evolutionary Superpixel Segmentation for PolSAR Image Classification

Boce Chu,
Mengxuan Zhang,
Kun Ma
et al.

Abstract: Superpixel segmentation has been widely used in the field of computer vision. The generations of PolSAR superpixels have also been widely studied for their feasibility and high efficiency. The initial numbers of PolSAR superpixels are usually designed manually by experience, which has a significant impact on the final performance of superpixel segmentation and the subsequent interpretation tasks. Additionally, the effective information of PolSAR superpixels is not fully analyzed and utilized in the generation … Show more

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“…The network performance is better than that of existing convolutional neural networks based on real or complex numbers. Chu et al [57] proposed a two-layer multi-objective superpixel segmentation network, with one layer used to optimize network parameters and the other layer used to refine segmentation results can achieve excellent segmentation results without obtaining prior information. These studies all demonstrate that the application of deep learning in the field of PolSAR is very successful.…”
Section: Introductionmentioning
confidence: 99%
“…The network performance is better than that of existing convolutional neural networks based on real or complex numbers. Chu et al [57] proposed a two-layer multi-objective superpixel segmentation network, with one layer used to optimize network parameters and the other layer used to refine segmentation results can achieve excellent segmentation results without obtaining prior information. These studies all demonstrate that the application of deep learning in the field of PolSAR is very successful.…”
Section: Introductionmentioning
confidence: 99%