Low-illumination image enhancement method for spatial adaptive supervised learning
The invention discloses a low-illumination image enhancement method for spatial adaptive supervised learning. The method comprises the following steps: inputting a target image into a trained low-illumination enhancement network model for low-illumination enhancement; the low illumination enhancemen...
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Format | Patent |
Language | Chinese English |
Published |
01.12.2023
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Abstract | The invention discloses a low-illumination image enhancement method for spatial adaptive supervised learning. The method comprises the following steps: inputting a target image into a trained low-illumination enhancement network model for low-illumination enhancement; the low illumination enhancement network model comprises a local branch, a global branch and an adaptive feature fusion module; the local branch obtains local features of the target image; the global branch acquires global features of the target image; and the adaptive feature fusion module fuses the obtained local features and global features to complete low-illumination image enhancement.
本发明公开了一种空间自适应监督学习的低光照图像增强方法,将目标图像输入训练好的低光照增强网络模型中进行低光照增强;所述低光照增强网络模型包括局部分支、全局分支和自适应特征融合模块;所述局部分支获取目标图像的局部特征;所述全局分支获取目标图像的全局特征;所述自适应特征融合模块将所得局部特征和全局特征进行融合,完成低光照图像增强。 |
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AbstractList | The invention discloses a low-illumination image enhancement method for spatial adaptive supervised learning. The method comprises the following steps: inputting a target image into a trained low-illumination enhancement network model for low-illumination enhancement; the low illumination enhancement network model comprises a local branch, a global branch and an adaptive feature fusion module; the local branch obtains local features of the target image; the global branch acquires global features of the target image; and the adaptive feature fusion module fuses the obtained local features and global features to complete low-illumination image enhancement.
本发明公开了一种空间自适应监督学习的低光照图像增强方法,将目标图像输入训练好的低光照增强网络模型中进行低光照增强;所述低光照增强网络模型包括局部分支、全局分支和自适应特征融合模块;所述局部分支获取目标图像的局部特征;所述全局分支获取目标图像的全局特征;所述自适应特征融合模块将所得局部特征和全局特征进行融合,完成低光照图像增强。 |
Author | KONG SIQI SU YUHAO KASUHIN SHI MINGZHU LIN XINHUI TAN MUXIAN |
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DocumentTitleAlternate | 一种空间自适应监督学习的低光照图像增强方法 |
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Snippet | The invention discloses a low-illumination image enhancement method for spatial adaptive supervised learning. The method comprises the following steps:... |
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Title | Low-illumination image enhancement method for spatial adaptive supervised learning |
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