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Laplacian regularized active learning for image segmentation

机译:拉普拉斯正则化主动学习的图像分割

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Image segmentation is a common topic in image processing. Many methods has been used in image segmentation, such as Graph cut, threshold-based. However, these methods can't work with high precision. Among these method, SVM is used as a good tool for classification, as we treat image segmentation as a problem of classification. To solve the problem above and get better segmentation result as well as high precision, we add Laplacian regularization to SVM algorithm to get a new algorithm i.e. Laplacian regularized active learning for image segmentation. Our algorithm considers distance between pixels when segmenting a picture, which is executed by Laplacian regularization. Experiments demonstrate that our algorithm perform better in comparison with common SVM algorithm.
机译:图像分割是图像处理中的常见主题。在图像分割中已经使用了许多方法,例如基于阈值的图割。但是,这些方法不能高精度地工作。在这些方法中,由于我们将图像分割视为分类问题,因此SVM可用作分类的良好工具。为了解决上述问题并获得更好的分割效果和更高的精度,我们在SVM算法中添加了Laplacian正则化以得到一种新的算法,即用于图像分割的Laplacian正则化主动学习。我们的算法在分割图片时会考虑像素之间的距离,这是由Laplacian正则化执行的。实验证明,与常规的SVM算法相比,我们的算法性能更好。

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