Scale-constrained unsupervised evaluation method for multi-scale image segmentation

Yuhang Lu, Youchuan Wan, Gang Li
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引用次数: 1

Abstract

Unsupervised evaluation of segmentation quality is a crucial step in image segmentation applications. Previous unsupervised evaluation methods usually lacked the adaptability to multi-scale segmentation. A scale-constrained evaluation method that evaluates segmentation quality according to the specified target scale is proposed in this paper. First, regional saliency and merging cost are employed to describe intra-region homogeneity and inter-region heterogeneity, respectively. Subsequently, both of them are standardized into equivalent spectral distances of a predefined region. Finally, by analyzing the relationship between image characteristics and segmentation quality, we establish the evaluation model. Experimental results show that the proposed method outperforms four commonly used unsupervised methods in multi-scale evaluation tasks.
多尺度图像分割的尺度约束无监督评价方法
图像分割质量的无监督评价是图像分割应用的关键步骤。以往的无监督评价方法缺乏对多尺度分割的适应性。提出了一种尺度约束的分割质量评价方法,根据指定的目标尺度对分割质量进行评价。首先,用区域显著性和合并成本分别描述区域内的同质性和区域间的异质性。然后,将两者标准化为预定义区域的等效光谱距离。最后,通过分析图像特征与分割质量之间的关系,建立了分割质量评价模型。实验结果表明,该方法在多尺度评价任务中优于常用的四种无监督方法。
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