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Object Contour Extraction Based Salience Detection and Automatic Region Growing

机译:基于目标轮廓提取的显着性检测和区域自动增长

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Contraposing to the problem of manual selection of seeds and inaccurate object contour detection for the traditional region growing algorithm, in this work, a novel object contour extraction method is proposed based on salient region detection and automatic region growing, which consists of four crucial steps. Firstly we partition off an original image to be super-pixels by hexagonally arranged iterative clustering (HAIC). Secondly, we locate the salient object by super-pixel global contrast (SGC), and then determine the centroid and background color set. Thirdly, seed can be automatically selected from background color set. Finally, the object contour is extracted by post-processing: open operation and isolated region elimination. Experimental results show that the proposed method is easy to implement with low time complexity, and the salient object contour nearly fit target boundary.
机译:针对传统的区域增长算法中种子的人工选择和目标轮廓检测不准确的问题,本文提出了一种基于显着区域检测和自动区域生长的新颖的目标轮廓提取方法,该方法包括四个关键步骤。首先,我们通过六角排列的迭代聚类(HAIC)将原始图像划分为超像素。其次,我们通过超像素全局对比度(SGC)定位显着对象,然后确定质心和背景颜色集。第三,可以从背景颜色集中自动选择种子。最后,通过后处理提取对象轮廓:开放操作和孤立区域消除。实验结果表明,该方法易于实现,且时间复杂度低,突出物体轮廓线接近目标边界。

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