嵌入视网膜校正显著性的水平集图像分割方法

Dongmei Liu, F. Chang, Huaxiang Zhang, Li Liu
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引用次数: 2

摘要

当使用水平集方法分割具有高强度非均匀性和复杂背景场景的自然图像时,可能是一项非常具有挑战性的任务。提出了一种基于视黄酮校正的显著区域信息和边缘信息相结合的鲁棒图像分割的综合水平集方法。首先,引入Retinex理论对显著性信息提取进行修正。其次,将视网膜校正的显著性信息嵌入到水平集方法中,因为它具有使前景物体相对于背景突出的优势。结合边缘信息,分割的边界将更加精确和平滑。实验结果表明,该分割算法具有高效、快速、可靠和鲁棒性好等特点。
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Level set method with Retinex-corrected saliency embedded for image segmentation
It can be a very challenging task when using level set method segmenting natural images with high intensity inhomogeneity and complex background scenes. A new synthesis level set method for robust image segmentation based on the combination of Retinex-corrected saliency region information and edge information is proposed in this work. First, the Retinex theory is introduced to correct the saliency information extraction. Second, the Retinex-corrected saliency information is embedded into the level set method due to its advantageous quality which makes a foreground object stand out relative to the backgrounds. Combined with the edge information, the boundary of segmentation will be more precise and smooth. Experiments indicate that the proposed segmentation algorithm is efficient, fast, reliable, and robust.
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