降噪
一般化
噪音(视频)
纳米尺度
降级(电信)
原子力显微镜
特征(语言学)
残余物
计算机科学
图像去噪
人工智能
材料科学
算法
模式识别(心理学)
视频去噪
随机噪声
生物系统
计算机视觉
曲面(拓扑)
人工神经网络
解码方法
对偶(语法数字)
还原(数学)
均方误差
纳米-
作者
Tenglong Yu,Yuxi Huang,Quan Gu,Hui Li,Shibo Liu,Qiuyang Deng,Zuobin Wang
摘要
Atomic force microscopy (AFM) images often suffer from random fluctuations, periodic interference, and scanning artifacts. We propose DARA-Net, a denoising framework combining a dual U-shaped GAN architecture with residual attention blocks (RABs) in the decoder stage. Two parallel predictors-one for structural content and one for noise-enable effective feature disentanglement, while the GAN framework enhances detail realism. The fused output benefits from the RAB's ability to suppress complex noise and preserve nanoscale topographical features. A dataset of 1000 in-house AFM images with synthetic degradation was used for training and evaluation. The results show that DARA-Net outperforms classical and state-of-the-art methods in PSNR, SSIM, and RMSE and achieves lower errors in four physical surface metrics (perimeter, height, roughness, and volume), demonstrating superior generalization and structural preservation for nanoscale imaging.
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