4.6 Article

Enhanced DQE and sub-pixel resolution by single-event processing in counting hybrid pixel electron detectors: A simulation study

期刊

FRONTIERS IN PHYSICS
卷 11, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fphy.2023.1123787

关键词

electron counting detector; single-event processing; DQE; sub-pixel resolution; hybrid pixel

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In this study, a simple and robust method of single-event processing based on the substitution of the original cluster of pixels with an isotropic Gaussian function is introduced. The proposed method offers better filtering of noise power spectrum and allows for sub-pixel resolution. The performance of this method is compared to other standard techniques and shows the best results in a simulated realistic scenario.
Detective quantum efficiency (DQE) is a prominent figure of merit for imaging detectors, and its optimization is of fundamental importance for the efficient use of the experimental apparatus. In this work, I study the potential improvement offered by data processing on a single-event basis in a counting hybrid pixel electron detector (HPD). In particular, I introduce a simple and robust method of single-event processing based on the substitution of the original cluster of pixels with an isotropic Gaussian function. Key features are a better filtering of the noise power spectrum (NPS) and readily allowing for sub-pixel resolution. The performance of the proposed method is compared to other standard techniques such as centroiding and event normalization, in the simulated realistic scenario of 100 keV electrons impinging on a 450 mu m-thick silicon sensor with a pixel size of 75 mu m, yielding the best results. The DQE can potentially be enhanced over the entire spatial frequency range, increasing from 0.86 to nearly 1 at zero frequency and extending up to 1.40 times the physical Nyquist frequency of the system thanks to the sub-pixel resolution capability.

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