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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Image Segmentation Using Linked Mean-Shift Vectors and Global/Local Attributes
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Image Segmentation Using Linked Mean-Shift Vectors and Global/Local Attributes

机译:使用链接的均值漂移向量和全局/局部属性的图像分割

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摘要

This paper proposes novel noniterative mean-shift-based image segmentation that uses global and local attributes. The existing mean-shift-based methods use a fixed range bandwidth, and hence their accuracy is dependent on the range spectrum of an image. To resolve this dependency, this paper proposes to modify the range kernel in the mean-shift process to be anisotropic. The modification is conducted using a global attribute defined as the range covariance matrix of the image. Further, to alleviate oversegmentation, the proposed method merges the segments having similar local attributes more aggressively than other segments. The local attribute for each segment is defined as the sum of the variances of the chromatic components. Finally, to expedite the processing, the proposed method uses a region adjacency graph (RAG) for the merging process, thus differing from the existing linked mean-shift-based methods. In the experiments on the Berkeley segmentation data set, the use of the global and local attributes improved segmentation accuracy; the proposed method outperformed the state-of-the-art linked mean-shift-based method by showing an improvement of 2.15%, 3.16%, 3.32%, and 1.90% in probability rand index, segmentation covering, variation of information, and F-measure, respectively. Further, compared with the benchmark method, which uses the dilating and merging scheme, the proposed method improved the speed of the merging process 42 times by applying the RAG.
机译:本文提出了一种基于全局和局部属性的新颖的基于均值漂移的非迭代图像分割方法。现有的基于均值漂移的方法使用固定的范围带宽,因此它们的准确性取决于图像的范围谱。为了解决这种依赖性,本文提出将均值漂移过程中的范围核修改为各向异性。使用定义为图像范围协方差矩阵的全局属性进行修改。此外,为了减轻过度分割,所提出的方法比其他分段更具攻击性地合并具有相似局部属性的分段。每个段的局部属性定义为色度分量的方差之和。最后,为加快处理速度,所提出的方法将区域邻接图(RAG)用于合并过程,因此不同于现有的基于链接均值平移的方法。在伯克利细分数据集的实验中,全局和局部属性的使用提高了细分准确性;该方法在概率兰德指数,细分覆盖率,信息变化和F方面显示出2.15%,3.16%,3.32%和1.90%的改进,优于基于最新链接均值漂移的方法-分别。此外,与使用扩展和合并方案的基准方法相比,该方法通过应用RAG将合并过程的速度提高了42倍。

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