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Scribble-Based 3D Shape Segmentation via Weakly-Supervised Learning

机译:通过弱监督学习的基于涂鸦的3D形状分割

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摘要

Shape segmentation is a fundamental problem in shape analysis. Previous research shows that prior knowledge helps to improve the segmentation accuracy and quality. However, completely labeling each 3D shape in a large training data set requires a heavy manual workload. In this paper, we propose a novel weakly-supervised algorithm for segmenting 3D shapes using deep learning. Our method jointly propagates information from scribbles to unlabeled faces and learns deep neural network parameters. Therefore, it does not rely on completely labeled training shapes and only needs a really simple and convenient scribble-based partially labeling process, instead of the extremely time-consuming and tedious fully labeling processes. Various experimental results demonstrate the proposed method's superior segmentation performance over the previous unsupervised approaches and comparable segmentation performance to the state-of-the-art fully supervised methods.
机译:形状分割是形状分析中的一个基本问题。以前的研究表明,先验知识有助于提高分割准确性和质量。但是,在大型训练数据集中完全标记每个3D形状需要繁重的手动工作负载。在本文中,我们提出了一种利用深度学习分割3D形状的新型弱监督算法。我们的方法将来自涂鸦的信息共同传播到未标记的面部,并学习深度神经网络参数。因此,它不依赖于完全标记的训练形状,并且只需要一个非常简单且基于简单的杂交的部分标记过程,而不是非常耗时和繁琐的完全标记过程。各种实验结果展示了所提出的方法对先前无监督的方法和可比分割性能的卓越分割性能,以及最先进的完全监督方法。

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