CompoNet: Learning to Generate the Unseen by Part Synthesis and Composition

November 19, 2018 Β· Entered Twilight Β· πŸ› arXiv.org

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Repo contents: .gitignore, LICENSE, README.md, anaconda_env, data, datasets, images, models.py, test.py, tf_ops, train.py, utils

Authors Nadav Schor, Oren Katzir, Hao Zhang, Daniel Cohen-Or arXiv ID 1811.07441 Category cs.GR: Graphics Cross-listed cs.CV, cs.LG Citations 10 Venue arXiv.org Repository https://github.com/nschor/CompoNet ⭐ 28 Last Checked 2 months ago
Abstract
Data-driven generative modeling has made remarkable progress by leveraging the power of deep neural networks. A reoccurring challenge is how to enable a model to generate a rich variety of samples from the entire target distribution, rather than only from a distribution confined to the training data. In other words, we would like the generative model to go beyond the observed samples and learn to generate ``unseen'', yet still plausible, data. In our work, we present CompoNet, a generative neural network for 2D or 3D shapes that is based on a part-based prior, where the key idea is for the network to synthesize shapes by varying both the shape parts and their compositions. Treating a shape not as an unstructured whole, but as a (re-)composable set of deformable parts, adds a combinatorial dimension to the generative process to enrich the diversity of the output, encouraging the generator to venture more into the ``unseen''. We show that our part-based model generates richer variety of plausible shapes compared with baseline generative models. To this end, we introduce two quantitative metrics to evaluate the diversity of a generative model and assess how well the generated data covers both the training data and unseen data from the same target distribution. Code is available at https://github.com/nschor/CompoNet.
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