Dynamic PET Image Reconstruction via Non-negative INR Factorization
- URL: http://arxiv.org/abs/2503.08025v1
- Date: Tue, 11 Mar 2025 04:13:30 GMT
- Title: Dynamic PET Image Reconstruction via Non-negative INR Factorization
- Authors: Chaozhi Zhang, Wenxiang Ding, Roy Y. He, Xiaoqun Zhang, Qiaoqiao Ding,
- Abstract summary: We introduce an unsupervised learning approach, Non-negative Implicit Neural Representation Factorization (textttNINRF), based on low rank matrix factorization of unknown images.<n>Experiments on dynamic PET reconstruction with Poisson noise demonstrate the effectiveness of the proposed method.
- Score: 2.6408529601818422
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The reconstruction of dynamic positron emission tomography (PET) images from noisy projection data is a significant but challenging problem. In this paper, we introduce an unsupervised learning approach, Non-negative Implicit Neural Representation Factorization (\texttt{NINRF}), based on low rank matrix factorization of unknown images and employing neural networks to represent both coefficients and bases. Mathematically, we demonstrate that if a sequence of dynamic PET images satisfies a generalized non-negative low-rank property, it can be decomposed into a set of non-negative continuous functions varying in the temporal-spatial domain. This bridges the well-established non-negative matrix factorization (NMF) with continuous functions and we propose using implicit neural representations (INRs) to connect matrix with continuous functions. The neural network parameters are obtained by minimizing the KL divergence, with additional sparsity regularization on coefficients and bases. Extensive experiments on dynamic PET reconstruction with Poisson noise demonstrate the effectiveness of the proposed method compared to other methods, while giving continuous representations for object's detailed geometric features and regional concentration variation.
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