Cha Eunju, Chung Hyungjin, Jang Jaeduck, Lee Junho, Lee Eunha, Ye Jong Chul
Samsung Advanced Institute of Technology, Samsung Electronics, Gyeonggi-do 16678, Republic of Korea.
Department of Bio and Brain Engineering, Korea Advanced Institute of Science and Technology (KAIST), Daejeon 34141, Republic of Korea.
ACS Nano. 2022 Jul 26;16(7):10314-10326. doi: 10.1021/acsnano.2c00168. Epub 2022 Jun 21.
High-angle annular dark-field (HAADF) scanning transmission electron microscopy (STEM) can be acquired together with energy dispersive X-ray (EDX) spectroscopy to give complementary information on the nanoparticles being imaged. Recent deep learning approaches show potential for accurate 3D tomographic reconstruction for these applications, but a large number of high-quality electron micrographs are usually required for supervised training, which may be difficult to collect due to the damage on the particles from the electron beam. To overcome these limitations and enable tomographic reconstruction even in low-dose sparse-view conditions, here we present an unsupervised deep learning method for HAADF-STEM-EDX tomography. Specifically, to improve the EDX image quality from low-dose condition, a HAADF-constrained unsupervised denoising approach is proposed. Additionally, to enable extreme sparse-view tomographic reconstruction, an unsupervised view enrichment scheme is proposed in the projection domain. Extensive experiments with different types of quantum dots show that the proposed method offers a high-quality reconstruction even with only projection views recorded under low-dose conditions.
高角度环形暗场(HAADF)扫描透射电子显微镜(STEM)可以与能量色散X射线(EDX)光谱一起获取,以提供有关所成像纳米颗粒的补充信息。最近的深度学习方法显示了在这些应用中进行精确三维断层重建的潜力,但监督训练通常需要大量高质量的电子显微照片,由于电子束对颗粒的损伤,这些照片可能难以收集。为了克服这些限制并实现即使在低剂量稀疏视图条件下的断层重建,我们在此提出一种用于HAADF-STEM-EDX断层扫描的无监督深度学习方法。具体而言,为了从低剂量条件下提高EDX图像质量,提出了一种HAADF约束的无监督去噪方法。此外,为了实现极端稀疏视图断层重建,在投影域中提出了一种无监督视图增强方案。对不同类型量子点的大量实验表明,即使在低剂量条件下仅记录了投影视图,所提出的方法也能提供高质量的重建。