基于双分支循环网络的足迹图像去噪方法OA
Denoising Method for Footprint Images Based on Dual-Branch Cyclic Network
足迹图像作为刑侦与生物识别中的关键个体特征,在采集过程中易受多种环境因素干扰,常伴随复杂噪声与图像质量下降等问题.针对足迹图像中常见的复合噪声,该文提出一种改进的双分支循环去噪网络,来实现高保真图像的还原与纹理结构的重建.网络整体包含两个生成器与两个判别器,生成器部分由两个协同优化的分支(去噪映射分支与颜色校正分支)组成.去噪映射分支设计了增强型多尺度结构块(EMSB)强化结构建模与纹理恢复能力,并融合多尺度卷积、深度可分离卷积与多注意力机制,有效增强纹理敏感区域的特征表达能力;颜色校正分支构建了自适应颜色一致性模块(CCM),通过多尺度残差卷积提取颜色特征,并在RGB空间中进行通道归一化与残差融合,抑制生成图像中的色偏问题.此外,设计了多层级结构感知损失函数,联合像素精度与结构相似性引导网络在恢复细节的同时提升整体感知质量,并在自建足迹数据集FSD-Real上开展了实验评估.结果表明,所提方法在峰值信噪比与结构相似性指标上分别达到30.3 dB和0.926,显著优于现有主流方法;同时,在主观视觉效果上亦展现出更强的去噪能力与细节保留能力,验证了其在实际足迹图像处理任务中的应用潜力.
As a key individual feature in forensic investigation and biometric recognition,footprint images are highly susceptible to diverse environmental factors during acquisition,often accompanied by complex noise and image quality degradation.To address composite noise commonly present in footprint images,this paper proposes an enhanced dual-branch cyclic denoising network for high-fidelity image restoration and texture structure reconstruc-tion.The overall network comprises two generators and two discriminators,with the generator comprising two syner-gistically optimized branches:a denoising mapping branch and a color correction branch.The denoising mapping branch incorporates an Enhanced Multi-Scale Structure Block(EMSB)to strengthen structural modeling and texture recovery capabilities.By integrating multi-scale convolutions,depthwise separable convolutions,and multi-attention mechanisms,this branch effectively enhances feature representation in texture-sensitive regions.Simulta-neously,the color correction branch employs an adaptive Color Consistency Module(CCM),which extracts color fea-tures via multi-scale residual convolutions and performs channel-wise normalization and residual fusion in the RGB space to suppress color deviation in the generated images.Furthermore,a multi-level structural perception loss function is designed,combining pixel-level accuracy with structural similarity to guide the network in recovering de-tails while improving overall perceptual quality.Experimental evaluations conducted on the self-built footprint data-set,FSD-Real,demonstrate that the proposed method achieves a Peak Signal-to-Noise Ratio(PSNR)of 30.3 dB and a Structural Similarity Index(SSIM)of 0.926,significantly outperforming existing mainstream methods.Moreover,the method exhibits superior denoising performance and detail preservation in terms of subjective visual quality,validating its application potential in real-world footprint image processing tasks.
鲍文霞;佘成龙;王年;郭文涛
安徽大学 电子信息工程学院,安徽 合肥 230601安徽大学 电子信息工程学院,安徽 合肥 230601安徽大学 电子信息工程学院,安徽 合肥 230601安徽大学 电子信息工程学院,安徽 合肥 230601
信息技术与安全科学
图像去噪足迹图像生成对抗网络双分支循环网络
image denoisingfootprint imagegenerative adversarial networkdual-branch cyclic network
《华南理工大学学报(自然科学版)》 2026 (5)
1-14,14
福建省科技重大专项专题项目(2024HZ025022)Supported by Fujian Province Major Science and Technology Special Project(2024HZ025022)
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