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Extracting Subimages of an Unknown Category from a Set of Images

机译:从一组图像中提取未知类别的子像​​量

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Suppose a set of images contains frequent occurrences of objects from an unknown category. This paper is aimed at simultaneously solving the following related problems: (1) unsupervised identification of photometric, geometric, and topological (mutual containment) properties of multiscale regions defining objects in the category; (2) learning a region-based structural model of the category in terms of these properties from a set of training images; and (3) segmentation and recognition of objects from the category in new images. To this end, each image is represented by a tree that captures a multiscale image segmentation. The trees are matched to find the maximally matching subtrees across the set, the existence of which is itself viewed as evidence that a category is indeed present. The matched subtrees are fused into a canonical tree, which represents the learned model of the category. Recognition of objects in a new image and image segmentation delineating all object parts are achieved simultaneously by finding matches of the model with subtrees of the new image. Experimental comparison with state-of-the-art methods shows that the proposed approach has similar recognition and superior localization performance while it uses fewer training examples.
机译:假设一组图像包含来自未知类别的频繁出现对象。本文旨在同时解决以下相关问题:(1)多尺度区域定义类别中对象的光度,几何和拓扑(相互容纳)属性的无监督识别; (2)从一组训练图像中学习这些属性的基于区域的结构模型; (3)分割和识别新图像中类别的对象。为此,每个图像由捕获多尺度图像分割的树表示。树木匹配以找到整个集合的最大匹配的子树,其本身就被视为一种类别的证据确实存在。匹配的子树融合到规范树中,该树代表了类别的学习模型。通过使用新图像的子树查找模型的匹配,通过查找模型的匹配来同时识别划分所有对象部分的对象和图像分割。与最先进的方法的实验比较表明,该方法具有相似的识别和卓越的本地化性能,而使用较少的训练示例。

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