基于波长相关消光系数模型的雾中多光谱图像除雾技术

Feng Huang, Chaozhen Ke, Xianyu Wu, Cuixia Guo, and Yu Liu
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摘要

文献中介绍的大多数最先进的消雾模型都假定所有光谱通道的衰减系数是恒定的,这不可避免地会导致光谱失真和信息偏差。为解决这一问题,本文提出了一种考虑到穿越雾气的多光谱光通道消光系数差异的消雾方法。然后重建每个光谱通道的空间分布透射图,以还原雾衰减图像。各种现实复杂场景的实验结果表明,与最先进的技术相比,所提出的方法在恢复丢失的细节、补偿衰减的光谱信息以及识别更多隐藏在均匀地雾中的目标方面具有更突出的优势。此外,这项工作还提供了一种以多光谱相对消光系数表示雾的内在特性的方法,为进一步重建多光谱信息奠定了基础。
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Multispectral image defogging based on a wavelength-dependent extinction coefficient model in fog
Most of the state-of-the-art defogging models presented in the literature assume that the attenuation coefficient of all spectral channels is constant, which inevitably leads to spectral distortion and information bias. To address this issue, this paper proposes a defogging method that takes into account the difference between the extinction coefficients of multispectral channels of light traveling through fog. Then the spatially distributed transmission map of each spectral channel is reconstructed to restore the fog-degraded images. The experimental results of various realistic complex scenes show that the proposed method has more outstanding advantages in restoring lost detail, compensating for degraded spectral information, and recognizing more targets hidden in uniform ground fog than state-of-the-art technologies. In addition, this work provides a method to characterize the intrinsic property of fog expressed as multispectral relative extinction coefficients, which act as a fundament for further reconstruction of multispectral information.
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