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In the Shadows, Shape Priors Shine: Using Occlusion to Improve Multi-region Segmentation

机译:在阴影中,Shape Priors闪耀:使用遮挡改善多区域分割

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We present a new algorithm for multi-region segmentation of 2D images with objects that may partially occlude each other. Our algorithm is based on the observation that human performance on this task is based both on prior knowledge about plausible shapes and taking into account the presence of occluding objects whose shape is already known - once an occluded region is identified, the shape prior can be used to guess the shape of the missing part. We capture the former aspect using a deep learning model of shape, for the latter, we simultaneously minimize the energy of all regions and consider only unoccluded pixels for data agreement. Existing algorithms incorporating object shape priors consider every object separately in turn and can't distinguish genuine deviation from the expected shape from parts missing due to occlusion. We show that our method significantly improves on the performance of a representative algorithm, as evaluated on both preprocessed natural and synthetic images. Furthermore, on the synthetic images, we recover the ground truth segmentation with good accuracy.
机译:我们提出了一种新的2D图像多区域分割算法,其中对象可能会部分相互遮挡。我们的算法基于以下观察结果:人类在此任务上的表现既基于关于合理形状的先验知识,又考虑到存在形状已知的闭塞对象-一旦确定了闭塞区域,就可以使用先验形状猜测缺失部分的形状。我们使用形状的深度学习模型来捕获前一个方面,而对于后者,我们同时将所有区域的能量最小化,并仅考虑未遮挡的像素以达成数据一致性。现有的结合了物体形状先验的算法依次考虑了每个物体,并且无法将真实形状与预期形状的差异与因遮挡而丢失的零件区分开。我们表明,通过对预处理后的自然图像和合成图像进行评估,我们的方法可以显着提高代表性算法的性能。此外,在合成图像上,我们以良好的精度恢复了地面真实分割。

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