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Normalized Joint Mutual Information Measure for Image Segmentation Evaluation with Multiple Ground-Truth Images

机译:用于多个地面图像的图像分割评估的归一化联合互信息量度

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Supervised or ground-truth-based image segmentation evaluation paradigm plays an important role in objectively evaluating segmentation algorithms. So far, many evaluation methods in terms of comparing clusterings in machine learning field have been developed. Being different from recognition task, image segmentation is considered an ill-defined problem. In a hand-labeled segmentations dataset, for the same image, different human subjects always produce various segmented results, leading to more than one ground-truth segmentations for an image. Thus, it is necessary to extend the traditional pairwise similarity measures that compare a machine generated clustering and a "true" clustering to handle multiple ground-truth clusterings. In this paper, based on the Normalized Mutual Information (NMI) which is a popular information theoretic measure for clustering comparison, we propose to utilize the Normalized Joint Mutual Information (NJMI), an extension of the NMI, to achieve the goal mentioned above. We illustrate the effectiveness of NJMI for objective segmentation evaluation with multiple ground-truth segmentations by testing it on images from Berkeley segmentation dataset.
机译:监督或基于地面真相的图像分割评估范例在客观评估分割算法中发挥着重要作用。到目前为止,已经开发了许多在机器学习领域中用于比较聚类的评估方法。与识别任务不同,图像分割被认为是定义不明确的问题。在手工标记的分割数据集中,对于同一幅图像,不同的人类对象总是会产生各种分割结果,从而导致对图像进行多个地面真实分割。因此,有必要扩展传统的成对相似性度量,以比较机器生成的聚类和“真实”聚类以处理多个地面真实性聚类。在本文中,基于归一化互信息(NMI)是一种用于聚类比较的流行信息理论量度,我们提出利用归一化互通信息(NJMI)(NMI的扩展)来实现上述目标。我们通过在Berkeley分割数据集中的图像上对其进行测试,来说明NJMI对具有多个地面真实分割的目标分割评估的有效性。

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