形状引导目标分割

Eran Borenstein, Jitendra Malik
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引用次数: 123

摘要

我们构建了一个贝叶斯模型,该模型集成了自顶向下和自底向上的标准,利用它们的相对优点来获得形状特定且纹理不变的图-地分割。在多个尺度下,自下而上的分段层次结构用于在图像的所有可能的图形-背景分割上构建先验。我们的自顶向下部分使用这个先验来使用存储的形状模板查询和检测图像中的对象部分。检测到的部分被整合以产生物体形状的全局近似,然后由推理算法使用该近似来产生最终的分割。对大量马和跑步者图像进行的实验表明,尽管物体和背景具有很高的可变性,但图像-背景分割效果很好。由于匹配组件仅依赖于形状标准,因此分割对外观变化具有鲁棒性。该模型可能对需要标记的其他视觉任务有用,例如多个场景对象的分割。
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Shape Guided Object Segmentation
We construct a Bayesian model that integrates topdown with bottom-up criteria, capitalizing on their relative merits to obtain figure-ground segmentation that is shape-specific and texture invariant. A hierarchy of bottom-up segments in multiple scales is used to construct a prior on all possible figure-ground segmentations of the image. This prior is used by our top-down part to query and detect object parts in the image using stored shape templates. The detected parts are integrated to produce a global approximation for the object’s shape, which is then used by an inference algorithm to produce the final segmentation. Experiments with a large sample of horse and runner images demonstrate strong figure-ground segmentation despite high object and background variability. The segmentations are robust to changes in appearance since the matching component depends on shape criteria alone. The model may be useful for additional visual tasks requiring labeling, such as the segmentation of multiple scene objects.
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