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A Semisupervised Segmentation Model for Collections of Images

机译:图像集合的半监督分割模型

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摘要

In this paper, we consider the problem of segmentation of large collections of images. We propose a semisupervised optimization model that determines an efficient segmentation of many input images. The advantages of the model are twofold. First, the segmentation is highly controllable by the user so that the user can easily specify what he/she wants. This is done by allowing the user to provide, either offline or interactively, some (fully or partially) labeled pixels in images as strong priors for the model. Second, the model requires only minimal tuning of model parameters during the initial stage. Once initial tuning is done, the setup can be used to automatically segment a large collection of images that are distinct but share similar features. We will show the mathematical properties of the model such as existence and uniqueness of solution and establish a maximum/minimum principle for the solution of the model. Extensive experiments on various collections of biological images suggest that the proposed model is effective for segmentation and is computationally efficient.
机译:在本文中,我们考虑了图像大集合的分割问题。我们提出了一种半监督优化模型,该模型确定了许多输入图像的有效分割。该模型的优点是双重的。首先,用户可以高度控制分割,以便用户可以轻松指定他/她想要的内容。这是通过允许用户离线或交互式提供图像中某些(全部或部分)标记的像素作为模型的强先验条件来完成的。其次,模型在初始阶段仅需要对模型参数进行最小调整。初始调整完成后,可以使用该设置自动分割大量不同但共享相似功能的图像。我们将展示模型的数学性质,例如解的存在性和唯一性,并为模型的解建立最大/最小原理。在各种生物图像集合上的大量实验表明,提出的模型对于分割是有效的,并且在计算上是有效的。

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