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Figure-ground segmentation by transferring window masks

机译:通过转移窗罩进行图形地面分割

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We present a novel technique for figure-ground segmentation, where the goal is to separate all foreground objects in a test image from the background. We decompose the test image and all images in a supervised training set into overlapping windows likely to cover foreground objects. The key idea is to transfer segmentation masks from training windows that are visually similar to windows in the test image. These transferred masks are then used to derive the unary potentials of a binary, pairwise energy function defined over the pixels of the test image, which is minimized with standard graph-cuts. This results in a fully automatic segmentation scheme, as opposed to interactive techniques based on similar energy functions. Using windows as support regions for transfer efficiently exploits the training data, as the test image does not need to be globally similar to a training image for the method to work. This enables to compose novel scenes using local parts of training images. Our approach obtains very competitive results on three datasets (PASCAL VOC 2010 segmentation challenge, Weizmann horses, Graz-02).
机译:我们提出了一种用于图形-地面分割的新颖技术,其目标是将测试图像中的所有前景对象与背景分离。我们将测试图像和监督训练集中的所有图像分解为可能覆盖前景对象的重叠窗口。关键思想是从训练窗口转移分割蒙版,这些窗口在视觉上类似于测试图像中的窗口。然后,将这些转移的遮罩用于导出在测试图像的像素上定义的二进制成对能量函数的一元电势,使用标准图形切割将其最小化。与基于类似能量函数的交互技术相反,这导致了全自动分割方案。使用窗口作为传输的支持区域可以有效地利用训练数据,因为测试图像不需要与训练图像在全局上相似即可使用该方法。这使得能够使用训练图像的局部组成新颖的场景。我们的方法在三个数据集(PASCAL VOC 2010分段挑战,Weizmann马,Graz-02)上获得了非常具有竞争力的结果。

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