代码本
先验概率
人工智能
计算机科学
模式识别(心理学)
特征(语言学)
图像(数学)
编码(内存)
解码方法
约束(计算机辅助设计)
编码(集合论)
计算机视觉
参数化复杂度
一般化
锐化
图像处理
事先信息
图像压缩
钥匙(锁)
Linde–Buzo–Gray算法
判别式
概化理论
迭代重建
学习迁移
作者
Haowei Chen,Zhiwen Yang,Yang Zhou,Xiaoqian Zhang,Hui Zhang,Dan Zhao,Bingzheng Wei,Gang Zhou,Yan Xu
出处
期刊:PubMed
日期:2026-01-23
卷期号:PP
标识
DOI:10.1109/tmi.2026.3657118
摘要
Positron emission tomography (PET) image synthesis is a highly ill-posed problem that requires auxiliary priors to 1) alleviate the loss of high-quality (HQ) information in low-quality (LQ) inputs, and 2) impose additional constraints to reduce mapping uncertainty. However, existing auxiliary priors in PET image synthesis often provide inadequate guidance due to inaccurate prior information or limited prior expressiveness. To overcome the aforementioned limitations, the vector-quantized (VQ) codebook prior is employed as a promising solution. By learning discrete latent feature representations of HQ images through deep models, the VQ codebook prior encompasses accurate HQ information and possesses great expressiveness. Building upon this, we propose a novel two-stage framework, VQPET, that introduces the VQ codebook prior for PET image synthesis. In the first stage, it pretrains a VQGAN on an additional large-scale HQ PET dataset, encoding intrinsic HQ features as code items in the VQ codebook. The VQ codebook prior is thus derived from the high-level features obtained from the pretrained VQGAN and serves as an additional constraint for downstream synthesis. In the second stage, it develops a codebook-prior-guided network (CPGNet) that effectively exploits the VQ codebook prior to produce realistic outputs. Specifically, CPGNet progressively incorporates the VQ codebook prior at multiple decoding levels, providing reliable guidance for HQ synthesis. Compared to previous works, VQPET innovatively leverages additional large-scale HQ datasets to transfer pretrained prior knowledge for enhanced synthesis and functions as a general framework applicable to any encoder-decoder network. Extensive experiments demonstrate the substantial effect and robust generalizability of VQPET.
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