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Salient Object Segmentation Based on Automatic Labeling

机译:基于自动标注的显着目标分割

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This paper proposes an automatic salient object extraction framework. Firstly, the saliency model are developed by applying the low level color features and the boundary prior. The initial salient regions are extracted by adaptive thresholding. Multiple classifiers are trained with extracted initial region, which reflect color information of images or adopt label propagation. Then, the labels for segmentation are generated automatically via classifier composition. Finally, the conditional random field (CRF) model based on multi-feature fusion is applied for salient object segmentation. Empirical study reveals that the proposed algorithm achieves satisfying performance.
机译:本文提出了一种自动的显着目标提取框架。首先,通过应用低级颜色特征和边界先验来建立显着性模型。通过自适应阈值提取初始显着区域。使用提取的初始区域训练多个分类器,该初始区域反映图像的颜色信息或采用标签传播。然后,通过分类器组成自动生成用于分割的标签。最后,将基于多特征融合的条件随机场(CRF)模型应用于显着目标分割。实证研究表明,该算法取得了令人满意的性能。

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