Boiko Daniil A, Sulimova Valentina V, Kurbakov Mikhail Yu, Kopylov Andrei V, Seredin Oleg S, Cherepanova Vera A, Pentsak Evgeniy O, Ananikov Valentine P
Zelinsky Institute of Organic Chemistry, Russian Academy of Sciences, 119991 Moscow, Russia.
Tula State University, Lenine Ave. 92, 300012 Tula, Russia.
Nanomaterials (Basel). 2022 Nov 6;12(21):3914. doi: 10.3390/nano12213914.
Automated computational analysis of nanoparticles is the key approach urgently required to achieve further progress in catalysis, the development of new nanoscale materials, and applications. Analysis of nanoscale objects on the surface relies heavily on scanning electron microscopy (SEM) as the experimental analytic method, allowing direct observation of nanoscale structures and morphology. One of the important examples of such objects is palladium on carbon catalysts, allowing access to various chemical reactions in laboratories and industry. SEM images of Pd/C catalysts show a large number of nanoparticles that are usually analyzed manually. Manual analysis of a statistically significant number of nanoparticles is a tedious and highly time-consuming task that is impossible to perform in a reasonable amount of time for practically needed large amounts of samples. This work provides a comprehensive comparison of various computer vision methods for the detection of metal nanoparticles. In addition, multiple new types of data representations were developed, and their applicability in practice was assessed.
纳米颗粒的自动化计算分析是在催化、新型纳米材料开发及应用方面取得进一步进展迫切需要的关键方法。表面纳米级物体的分析严重依赖扫描电子显微镜(SEM)作为实验分析方法,它能直接观察纳米级结构和形态。这类物体的一个重要例子是碳载钯催化剂,它在实验室和工业中可用于各种化学反应。Pd/C催化剂的SEM图像显示有大量纳米颗粒,通常需人工分析。对具有统计学意义数量的纳米颗粒进行人工分析是一项繁琐且耗时极长的任务,对于实际所需的大量样品而言,无法在合理时间内完成。这项工作全面比较了用于检测金属纳米颗粒的各种计算机视觉方法。此外,还开发了多种新型数据表示方法,并评估了它们在实际中的适用性。