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Adaptive superpixel segmentation aggregating local contour and texture features

机译:融合局部轮廓和纹理特征的自适应超像素分割

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Superpixel segmentation targets at grouping pixels in an image into atomic regions that align well with the natural object boundaries. In this paper, we propose a novel superpixel segmentation method based on an iterative and adaptive clustering algorithm that embraces color, contour, texture, and spatial features together. The algorithm adjusts the weights of different features automatically in a content-aware way, so as to fit the requirements of various image instances. More specifically, in each iteration, the weights in the aggregation function are adjusted according to the discriminabilities of features in the current working scenario. This way, the algorithm not only possesses improved robustness but also relieves the burden of setting the parameters manually. Experimental verification shows that the algorithm outperforms existing peer algorithms in terms of commonly used evaluation metrics, while using a low computational cost.
机译:超像素分割的目标是将图像中的像素分组为与自然物体边界对齐的原子区域。在本文中,我们提出了一种基于迭代和自适应聚类算法的新型超像素分割方法,该算法将颜色,轮廓,纹理和空间特征融合在一起。该算法以内容感知的方式自动调整不同功能的权重,以适应各种图像实例的要求。更具体地,在每次迭代中,根据当前工作场景中特征的可分辨性来调整聚合函数中的权重。这样,该算法不仅具有提高的鲁棒性,而且减轻了手动设置参数的负担。实验验证表明,就常用的评估指标而言,该算法优于现有的对等算法,同时使用的计算成本较低。

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