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Multi-scale Image Co-segmentation

机译:多尺度图像共分割

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This paper focuses on producing accurate segmentation of a set of images at different scales. In the process of image co-segmentation, we turn our attention to the task of computing dense correspondences between a set of images. These correspondences are calculated in a dense grid of pixels, where each pixel is represented by an invariant descriptor computed at a unique, manually selected scale, this scale selection limits the efficiency of image co-segmentation methods when the common foregrounds appear at different scales. In this work, we use scale propagation to compute dense correspondences between images by assuming that if two images are being matched, scales should be assigned by considering feature point detections common to both images. We present both quantitative and qualitative tests, demonstrating significant improvements to segment images with large scale variation.
机译:本文侧重于在不同尺度上产生一组图像的精确分割。在图像共分割过程中,我们将注意力转向计算一组图像之间的密集对应的任务。这些对应关系在像素的密集网格中计算,其中每个像素由以唯一,手动所选择的比例计算的不变描述符表示,该比例选择限制了图像共分割方法的效率,当共同的前景在不同的尺度处出现时。在这项工作中,我们使用比例传播来通过假设匹配两个图像,通过考虑两个图像共同的特征点检测来分配比例来计算图像之间的密集对应。我们展示了定量和定性测试,展示了具有大规模变化的分段图像的显着改进。

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