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Proposal-Free Volumetric Instance Segmentation from Latent Single-Instance Masks

机译:来自潜在单个实例掩模的UPLAME的体积实例分段

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This work introduces a new proposal-free instance segmentation method that builds on single-instance segmentation masks predicted across the entire image in a sliding window style. In contrast to related approaches, our method concurrently predicts all masks, one for each pixel, and thus resolves any conflict, jointly across the entire image. Specifically, predictions from overlapping masks are combined into edge weights of a signed graph that is subsequently partitioned to obtain all final instances concurrently. The result is a parameter-free method that is strongly robust to noise and prioritizes predictions with the highest consensus across overlapping masks. All masks are decoded from a low dimensional latent representation, which results in great memory savings strictly required for applications to large volumetric images. We test our method on the challenging CREMI 2016 neuron segmentation benchmark where it achieves competitive scores.
机译:这项工作介绍了一种新的免费实例分段方法,该方法构建在滑动窗口样式的整个图像上预测的单实例分段掩码上。 与相关方法相比,我们的方法同时预测每个像素的所有掩码,因此在整个图像中共同地解析任何冲突。 具体地,从重叠掩模的预测组合成符号图的边缘权重,随后分区以同时地获得所有最终实例。 结果是一种无参数方法,对噪声强烈强大,并优先考虑与重叠掩模的最高共识的预测。 所有掩码都从低维潜在表示解码,这使得应用于大量图像的应用程序很大程度上。 我们在挑战的Cremi 2016神经元分割基准测试中测试我们实现竞争成绩的方法。

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