超像素的大小及其对交互式分割的影响

Kok Luong Goh, G. Ng, Muzaffar Hamzah, S. Chai
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引用次数: 3

摘要

半自动分割,也称为交互式图像分割,是一种基于用户输入从图像中提取感兴趣区域(ROI)的算法。所述算法将反复向用户输入信息馈送,直到所需要的感兴趣区域被成功分割。预处理步骤可以用来加快分割过程,同时改善最终结果。使用超像素就是这种预处理步骤的一个例子。超像素是一组具有相似特征的像素,如纹理和颜色。尽管在许多交互式分割算法中,它被用作预处理步骤,但很少有研究评估交互式分割算法所需的超像素大小对达到最佳结果的影响。因此,本研究的目的是解决这一问题,以弥合这一研究差距。本研究将使用基于最大相似度的区域合并(MSRM)与输入笔画对来自berkeley和Grabcut图像数据集的图像进行合并,这些图像是通过能量驱动样本(SEEDS)提取超像素生成的。我们从本研究中推断,具有至少500个超像素的图像将有助于交互式分割算法产生良好的分割结果,像素精度为0.963,f分数为0.844,Jaccard指数为0.756。当图像的超像素提高到10,000时,分割结果会下降。综上所述,超像素的大小会对最终的分割结果产生影响。
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Sizes of Superpixels and their Effect on Interactive Segmentation
Semi-automated segmentation, also known as interactive image segmentation, is an algorithm that extracts a region of interest (ROI) from an image based on user input. The said algorithm will be fed the user input information repeatedly until the required region of interest is successfully segmented. Pre-processing steps can be used to speed up the segmentation process while improving the end result. The use of superpixels is one example of such pre-processing step. A superpixel is a group of pixels that share similar characteristics such as texture and colour. Despite the fact that it is used as a pre-processing step in many interactive segmentation algorithms, less studies had been conducted to assess the effects of the size of superpixels required by interactive segmentation algorithms to achieve an optimal result. Therefore, the purpose of this research is to address this issue in order to bridge this research gap. This study will be performed using the Maximum Similarity based region merging (MSRM) with input strokes on selected images from the Berkeleys and Grabcut image data sets, generated by superpixels extractions via energy-driven samples (SEEDS We infer from this research that an image with a minimum of 500 superpixels will aid the interactive segmentation algorithm in producing a decent segmentation result with pixel accuracy of 0.963, F-score of 0.844, and Jaccard index of 0.756. When the superpixels for an image are raised to 10,000, the segmentation results degrade. In conclusion, the size of the superpixels would have an impact on the final segmentation results.
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