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Interactive Image Segmentation Using Multimodal Regularized Kernel Embedding

机译:使用多峰正则化核嵌入的交互式图像分割

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Interactive image segmentation is a classification problem that involves feature extraction like color features. However, in most cases the color features alone cannot discriminate foreground and background. This is due to the fact that both foreground and background can have possibly overlapping color modalities. Using kernels, different notions of pixel similarities can be incorporated. In this paper, we present an interactive image segmentation approach based on kernel embedding using Kernel Local Fisher Discriminant Analysis (KLFDA). We use KLFDA to transform pixel features into a new discriminative feature space. In this feature space the between-class separability is maximized and the locality within each class is preserved. One difficulty for using KLFDA is the setting for the regularization parameter ε. We propose different strategies to overcome this limitation. Our proposed strategies achieve better qualitative and quantitative results compared to state-of-the-art algorithms on the well known ISEG data set for interactive image segmentation.
机译:交互式图像分割是一个分类问题,涉及诸如颜色特征之类的特征提取。但是,在大多数情况下,仅靠颜色功能就无法区分前景和背景。这是由于这样的事实,即前景和背景都可能具有重叠的颜色模态。使用内核,可以合并像素相似度的不同概念。在本文中,我们提出了一种使用内核局部Fisher判别分析(KLFDA)的基于内核嵌入的交互式图像分割方法。我们使用KLFDA将像素特征转换为新的区分特征空间。在这个特征空间中,类间的可分离性最大化,并且每个类内的局部性得以保留。使用KLFDA的一个困难是正则化参数ε的设置。我们提出了不同的策略来克服此限制。与针对交互式图像分割的众所周知的ISEG数据集上的最新算法相比,我们提出的策略可实现更好的定性和定量结果。

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