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Analysis of Automatic Multi-label GrabCut using NPR for natural image segmentation

机译:使用NPR进行自然图像分割的自动多标签GrabCut分析

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Automatic Multi-label GrabCut is an extension of the standard GrabCut technique to segment a given image automatically into its natural segments without any user intervention. The Normalized Probabilistic Rand (NPR) index is able to give meaningful comparisons by comparing different images and different segmentations of the same image. In this paper, more analysis is conducted to evaluate the efficiency of the developed automatic multi-label GrabCut using the NPR index. Based on using more than one human ground truth, segmentations are conducted on a large scale of the Berkeley's benchmark of natural images. The NPR, PR and GCE metrics produced acceptable accuracy measures emphasizing the scalability of the proposed technique for large scale datasets. Comparisons are applied for different images and experiments show that the NPR is the most efficient score to determine good segmentation compared to other metrics.
机译:自动多标签GrabCut是标准GrabCut技术的扩展,可将给定图像自动分割为自然图像,而无需任何用户干预。通过比较不同图像和同一图像的不同分割,归一化概率兰德(NPR)索引能够给出有意义的比较。在本文中,将进行更多分析以使用NPR指数评估开发的自动多标签GrabCut的效率。基于使用了多个人类地面真理,在伯克利自然图像基准的大规模上进行了分割。 NPR,PR和GCE度量标准产生了可接受的精度度量,强调了所提出技术对大规模数据集的可伸缩性。比较适用于不同的图像,实验表明,与其他指标相比,NPR是确定良好分割效果的最有效分数。

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