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Jingnan Wang

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3 papers
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3

AAAI Conference 2026 Conference Paper

FashionMAC: Deformation-Free Fashion Image Generation with Fine-Grained Model Appearance Customization

  • Rong Zhang
  • Jinxiao Li
  • Jingnan Wang
  • Zhiwen Zuo
  • Jianfeng Dong
  • Wei Li
  • Chi Wang
  • Weiwei Xu

Garment-centric fashion image generation aims to synthesize realistic and controllable human models dressing a given garment, which has attracted growing interest due to its practical applications in e-commerce. The key challenges of the task lie in two aspects: (1) faithfully preserving the garment details, and (2) gaining fine-grained controllability over the model's appearance. Existing methods typically require performing garment deformation in the generation process, which often leads to garment texture distortions. Also, they fail to control the fine-grained attributes of the generated models, due to the lack of specifically designed mechanisms. To address these issues, we propose FashionMAC, a novel diffusion-based deformation-free framework that achieves high-quality and controllable fashion showcase image generation. The core idea of our framework is to eliminate the need for performing garment deformation and directly outpaint the garment segmented from a dressed person, which enables faithful preservation of the intricate garment details. Moreover, we propose a novel region-adaptive decoupled attention (RADA) mechanism along with a chained mask injection strategy to achieve fine-grained appearance controllability over the synthesized human models. Specifically, RADA adaptively predicts the generated regions for each fine-grained text attribute and enforces the text attribute to focus on the predicted regions by a chained mask injection strategy, significantly enhancing the visual fidelity and the controllability. Extensive experiments validate the superior performance of our framework compared to existing state-of-the-art methods.

YNIMG Journal 2026 Journal Article

Standardized quantification of [18F]Florbetazine amyloid PET with the Centiloid scale

  • Meiqi Wu
  • Menglin Liang
  • Chenhui Mao
  • Liling Dong
  • Qi Ge
  • Yuying Li
  • Jingnan Wang
  • Chao Ren

C]PiB across different image-processing pipelines and effective image resolutions (EIRs). METHODS: C]PiB SUVR were evaluated under different EIRs. RESULTS: F]FBZ SUVR were observed across EIRs with the SPM pipeline, whereas regression parameters varied across EIRs with the FreeSurfer pipeline. CONCLUSION: F]FBZ demonstrated equal or improved quantification precision, supporting its broader use in clinical and research Aβ imaging.

ICRA Conference 2024 Conference Paper

Probabilistic Spiking Neural Network for Robotic Tactile Continual Learning

  • Senlin Fang
  • Yiwen Liu
  • Chengliang Liu 0004
  • Jingnan Wang
  • Yuanzhe Su
  • Yupo Zhang
  • Hoiio Kong
  • Zhengkun Yi

The sense of touch is essential for robots to perform various daily tasks. Artificial Neural Networks have shown significant promise in advancing robotic tactile learning. However, due to the changing of tactile data distribution as robots encounter new tasks, ANN-based robotic tactile learning suffers from catastrophic forgetting. To solve this problem, we introduce a novel continual learning (CL) framework called the Probabilistic Spiking Neural Network with Variational Continual Learning (PSNN-VCL). In this framework, PSNN introduces uncertainty during spike emission and can apply fast Variational Inference by optimizing the uncertainty through backpropagation, which significantly reduces the required model parameters for VCL. We establish a robotic tactile CL benchmark using publicly available datasets to evaluate our method. Experimental results demonstrated that, compared to other CL methods, PSNN-VCL not only achieves superior performance in terms of widely used CL metrics but also achieves at least a 50% reduction in model parameters on the robotic tactile CL benchmark.