3D Face Reconstruction with Feature Enhancement using Bi-FPN for Forensic Analysis

Sincy John, A. Danti
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Abstract

The representation of facial features in three-dimensional space plays a pivotal role in various applications such as facial recognition, virtual reality, and digital entertainment. However, achieving high-fidelity reconstructions from two-dimensional facial images remains a challenging task, particularly in preserving fine texture details. This research addresses this problem by proposing a novel approach that leverages a combination of advanced techniques, including Resnet, Flame model, Bi-FPN, and a differential render architecture. The primary objective of this study is to enhance texture details in reconstructed 3D facial images. The integration of Bi-FPN (Bi-directional Feature Pyramid Network) enhances feature extraction and fusion across multiple scales, facilitating the preservation of texture details across different regions of the face. The objective is to accurately represent facial features from 2D images in three-dimensional space. By combining these methods, the proposed framework achieves significant improvements in preserving fine texture details and overall facial structure. Experimental results demonstrate the effectiveness of the approach, suggesting its potential for various applications such as virtual try-on and facial animation.
利用 Bi-FPN 增强三维人脸重建特征,用于法证分析
面部特征在三维空间中的表现在面部识别、虚拟现实和数字娱乐等各种应用中起着举足轻重的作用。然而,从二维面部图像实现高保真重建仍然是一项具有挑战性的任务,尤其是在保留精细纹理细节方面。为解决这一问题,本研究提出了一种新颖的方法,该方法结合了多种先进技术,包括 Resnet、火焰模型、Bi-FPN 和差分渲染架构。这项研究的主要目的是增强重建三维面部图像中的纹理细节。双向特征金字塔网络(Bi-FPN)的集成增强了跨尺度的特征提取和融合,有利于保留面部不同区域的纹理细节。其目的是在三维空间中准确呈现二维图像中的面部特征。通过结合这些方法,所提出的框架在保留精细纹理细节和整体面部结构方面取得了显著的改进。实验结果证明了这一方法的有效性,表明其在虚拟试穿和面部动画等各种应用中的潜力。
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