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TP2O: Creative Text Pair-to-Object Generation using Balance Swap-Sampling

About

Generating creative combinatorial objects from two seemingly unrelated object texts is a challenging task in text-to-image synthesis, often hindered by a focus on emulating existing data distributions. In this paper, we develop a straightforward yet highly effective method, called \textbf{balance swap-sampling}. First, we propose a swapping mechanism that generates a novel combinatorial object image set by randomly exchanging intrinsic elements of two text embeddings through a cutting-edge diffusion model. Second, we introduce a balance swapping region to efficiently sample a small subset from the newly generated image set by balancing CLIP distances between the new images and their original generations, increasing the likelihood of accepting the high-quality combinations. Last, we employ a segmentation method to compare CLIP distances among the segmented components, ultimately selecting the most promising object from the sampled subset. Extensive experiments demonstrate that our approach outperforms recent SOTA T2I methods. Surprisingly, our results even rival those of human artists, such as frog-broccoli.

Jun Li, Zedong Zhang, Jian Yang• 2023

Related benchmarks

TaskDatasetResultRank
Concept FusionImageNet-200 (test)
Votes22
5
Concept FusionCangJie-200 (test)
Votes17
5
Novel Object SynthesisImageNet-200 (test)
Avg Sim (I->I)0.7026
5
Novel Object SynthesisCangJie-200 (test)
Average Similarity (I->I)0.6595
5
Creative GenerationNature Mixture
VLM Judge Score6.81
4
Creative Image GenerationNature Mixture
Average Rank3.16
4
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