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Interactive image segmentation using particle competition and cooperation

机译:利用粒子竞争与合作进行交互式图像分割

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Many interactive image processing approaches are based on semi-supervised learning, which employ both labeled and unlabeled data in its training process. In the interactive image segmentation problem, a human specialist labels some pixels of an object while the semi-supervised algorithm labels the remaining pixels of the segment. The particle competition and cooperation model is a recent graph-based semi-supervised learning approach. It employs particles walking in a graph to classify the data items corresponding to graph nodes. Each particle group aims to dominate most unlabeled nodes, spreading their label, and preventing enemy particles invasion. In this paper, the particle competition and cooperation model is extended to perform interactive image segmentation. Each image pixel is converted into a graph node, which is connected to its nearest neighbors according to their visual features and location in the original image. Labeled pixel generates particles that propagate their label to the unlabeled pixels. The particle model also takes the contributions from the adjacent pixels to classify less confident labeled pixels. Computer simulations are performed on real-world images, including images from the Microsoft GrabCut dataset, which allows a straightly comparison with other techniques. The segmentation results show the effectiveness of the proposed approach.
机译:许多交互式图像处理方法都是基于半监督学习的,该方法在训练过程中同时使用了标记和未标记的数据。在交互式图像分割问题中,人类专家标记对象的某些像素,而半监督算法标记该片段的其余像素。粒子竞争与合作模型是一种最近的基于图的半监督学习方法。它采用在图中行走的粒子对与图节点相对应的数据项进行分类。每个粒子组旨在控制大多数未标记的节点,扩展其标记,并防止敌方粒子入侵。本文扩展了粒子竞争与合作模型来进行交互式图像分割。每个图像像素都转换为一个图节点,该图节点根据其视觉特征和在原始图像中的位置连接到其最近的邻居。标记的像素会生成粒子,这些粒子会将其标记传播到未标记的像素。粒子模型还采用了相邻像素的贡献来对不太可信的标记像素进行分类。计算机模拟是在真实世界的图像上执行的,包括来自Microsoft GrabCut数据集的图像,从而可以与其他技术进行直接比较。分割结果表明了该方法的有效性。

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