Poisson noise removal from high-resolution STEM images based on periodic block matching

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Abstract

Scanning transmission electron microscopy (STEM) provides sub-ångstrom, atomic resolution images of crystalline structures. However, in many applications, the ability to extract information such as atom positions, from such electron micrographs, is severely obstructed by low signal-to-noise ratios of the acquired images resulting from necessary limitations to the electron dose. We present a denoising strategy tailored to the special features of atomic-resolution electron micrographs of crystals limited by Poisson noise based on the block-matching and 3D-filtering (BM3D) algorithm by Dabov et al. We also present an economized block-matching strategy that exploits the periodic structure of the observed crystals. On simulated single-shot STEM images of inorganic materials, with incident electron doses below 4 C/cm 2 , our new method achieves precisions of 7 to 15 pm and an increase in peak signal-to-noise ratio (PSNR) of 15 to 20 dB compared to noisy images and 2 to 4 dB compared to images denoised with the original BM3D.

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APA

Mevenkamp, N., Binev, P., Dahmen, W., Voyles, P. M., Yankovich, A. B., & Berkels, B. (2015). Poisson noise removal from high-resolution STEM images based on periodic block matching. Advanced Structural and Chemical Imaging, 1(1). https://doi.org/10.1186/s40679-015-0004-8

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