背景减法
显微镜
薄层荧光显微镜
像素
人工智能
光学
计算机视觉
显微镜
背景噪声
计算机科学
噪音(视频)
荧光显微镜
基本事实
图像分辨率
图像处理
小波
光学显微镜
荧光
物理
图像(数学)
扫描电子显微镜
电信
作者
Manuel Hüpfel,Andrei Yu Kobitski,Weichun Zhang,G. Ulrich Nienhaus
摘要
Fluorescence microscopy images are inevitably contaminated by background intensity contributions. Fluorescence from out-of-focus planes and scattered light are important sources of slowly varying, low spatial frequency background, whereas background varying from pixel to pixel (high frequency noise) is introduced by the detection system. Here we present a powerful, easy-to-use software, wavelet-based background and noise subtraction (WBNS), which effectively removes both of these components. To assess its performance, we apply WBNS to synthetic images and compare the results quantitatively with the ground truth and with images processed by other background removal algorithms. We further evaluate WBNS on real images taken with a light-sheet microscope and a super-resolution stimulated emission depletion microscope. For both cases, we compare the WBNS algorithm with hardware-based background removal techniques and present a quantitative assessment of the results. WBNS shows an excellent performance in all these applications and significantly enhances the visual appearance of fluorescence images. Moreover, it may serve as a pre-processing step for further quantitative analysis.
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