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MRI India Journals Vol. 14 No. 3s (2025): Special Issue: AIDCON-2025

Neural Style Transfer

Authors

  • Priyanshu Bilwane Department of Artificial Intelligence, St. Vincent Pallotti College of Engineering and Technology , Nagpur, India
  • Ranu Nanhe Department of Artificial Intelligence, St. Vincent Pallotti College of Engineering and Technology , Nagpur, India
  • Rohit Wachnekar Department of Artificial Intelligence, St. Vincent Pallotti College of Engineering and Technology , Nagpur, India
  • Sahil Rajankar Department of Artificial Intelligence, St. Vincent Pallotti College of Engineering and Technology , Nagpur, India
  • Pinky Gangwani Department of Artificial Intelligence, St. Vincent Pallotti College of Engineering and Technology , Nagpur, India

DOI:

https://doi.org/10.65521/intjournalrecadvengtech.v14i3s.1695

Keywords:

Neural Style Transfer (NST) Adaptive Instance Normalization (AdaIN) two-stage hybrid pipeline optimization-based models feed-forward networks VGG19-based refinement Gram matrix texture matching channel-wise mean–variance stability Sobel edge preservation structural integrity generative visual tasks

Abstract

Balancing fidelity and efficiency remains a core challenge in Neural Style Transfer (NST). Traditional optimization-based models generate visually rich stylizations but are computationally slow, whereas feed-forward networks achieve real-time inference at the cost of structure and detail. This paper presents a two-stage hybrid pipeline that bridges this gap. The first stage employs Adaptive Instance Normalization (AdaIN) for rapid global alignment of content and style statistics. The second stage introduces a lightweight VGG19-based refinement that optimizes a composite loss integrating Gram matrix texture matching, channel-wise mean–variance stability, and Sobel edge preservation. This combination enhances both structural integrity and color coherence in the final stylized outputs. Experiments on varied content–style pairs demonstrate significant visual improvements while maintaining computational efficiency. Furthermore, our findings expose the limitations of traditional quantitative metrics such as  Peak Signal-to-Noise Ratio (PSNR) and Structural Similarity Index Measure (SSIM), which fail to capture perceptual quality, highlighting the necessity of perceptual measures like LPIPS for evaluating generative visual tasks.

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Published

2025-12-23

How to Cite

Bilwane, P., Nanhe, R., Wachnekar, R., Rajankar, S., & Gangwani, P. (2025). Neural Style Transfer. International Journal of Recent Advances in Engineering and Technology, 14(3s), 223–229. https://doi.org/10.65521/intjournalrecadvengtech.v14i3s.1695

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