English

Unsupervised Program Synthesis for Images By Sampling Without Replacement

Machine Learning 2021-06-16 v2 Machine Learning

Abstract

Program synthesis has emerged as a successful approach to the image parsing task. Most prior works rely on a two-step scheme involving supervised pretraining of a Seq2Seq model with synthetic programs followed by reinforcement learning (RL) for fine-tuning with real reference images. Fully unsupervised approaches promise to train the model directly on the target images without requiring curated pretraining datasets. However, they struggle with the inherent sparsity of meaningful programs in the search space. In this paper, we present the first unsupervised algorithm capable of parsing constructive solid geometry (CSG) images into context-free grammar (CFG) without pretraining via non-differentiable renderer. To tackle the \emph{non-Markovian} sparse reward problem, we combine three key ingredients -- (i) a grammar-encoded tree LSTM ensuring program validity (ii) entropy regularization and (iii) sampling without replacement from the CFG syntax tree. Empirically, our algorithm recovers meaningful programs in large search spaces (up to 3.8×10283.8 \times 10^{28}). Further, even though our approach is fully unsupervised, it generalizes better than supervised methods on the synthetic 2D CSG dataset. On the 2D computer aided design (CAD) dataset, our approach significantly outperforms the supervised pretrained model and is competitive to the refined model.

Keywords

Cite

@article{arxiv.2001.10119,
  title  = {Unsupervised Program Synthesis for Images By Sampling Without Replacement},
  author = {Chenghui Zhou and Chun-Liang Li and Barnabas Poczos},
  journal= {arXiv preprint arXiv:2001.10119},
  year   = {2021}
}

Comments

Accepted to UAI 2021

R2 v1 2026-06-23T13:22:26.258Z