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Regularized Vector Quantization for Tokenized Image Synthesis

Jiahui Zhang, Fangneng Zhan, Christian Theobalt, Shijian Lu

202324 citationsDOI

Abstract

Quantizing images into discrete representations has been a fundamental problem in unified generative modeling. Predominant approaches learn the discrete representation either in a deterministic manner by selecting the best-matching token or in a stochastic manner by sampling from a predicted distribution. However, deterministic quantization suffers from severe codebook collapse and misalignment with inference stage while stochastic quantization suffers from low codebook utilization and perturbed reconstruction objective. This paper presents a regularized vector quantization framework that allows to mitigate above issues effectively by applying regularization from two perspectives. The first is a prior distribution regularization which measures the discrepancy between a prior token distribution and the predicted token distribution to avoid code-book collapse and low codebook utilization. The second is a stochastic mask regularization that introduces stochasticity during quantization to strike a good balance between inference stage misalignment and unperturbed reconstruction objective. In addition, we design a probabilistic contrastive loss which serves as a calibrated metric to further mitigate the perturbed reconstruction objective. Extensive experiments show that the proposed quantization framework outperforms prevailing vector quantization methods consistently across different generative models including auto-regressive models and diffusion models.

Topics & Concepts

CodebookVector quantizationLinde–Buzo–Gray algorithmQuantization (signal processing)Regularization (linguistics)AlgorithmComputer scienceStochastic quantizationGenerative modelInferenceProbability distributionMathematicsArtificial intelligenceMathematical optimizationGenerative grammarStatisticsPhysicsQuantumQuantum mechanicsPath integral formulationGenerative Adversarial Networks and Image SynthesisAdvanced Image and Video Retrieval TechniquesComputer Graphics and Visualization Techniques
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