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CATEGORY LEVEL OBJECT SEGMENTATION: Learning to Segment Objects with Latent Aspect Models

机译:类别级别对象分割:使用潜在方面模型进行分段对象

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We propose a new method for learning to segment objects in images. This method is based on a latent variables model used for representing images and objects, inspired by the LDA model. Like the LDA model, our model is capable of automatically discovering which visual information comes from which object. We extend LDA by considering that images are made of multiple overlapping regions, treated as distinct documents, giving more chance to small objects to be discovered. This model is extremely well suited for assigning image patches to objects (even if they are small), and therefore for segmenting objects. We apply this method on objects belonging to categories with high intra-class variations and strong viewpoint changes.
机译:我们提出了一种学习图像中的对象的新方法。该方法基于用于表示图像和对象的潜在变量模型,由LDA模型的启发。与LDA模型一样,我们的模型能够自动发现哪些视觉信息来自哪个对象。我们通过考虑图像由多重重叠区域构成,视为不同的文档而扩展LDA,可以更有机会发现要发现的小物体。此模型非常适合用于将图像修补程序分配给对象(即使它们很小),因此用于分段对象。我们在属于具有高级别变体的类别和强大的视点变化的对象上应用此方法。

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