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Characterization of gold and silver nanoparticles using it's color image segmentation and feature extraction using fuzzy C-means clustering and generalized shape theory

机译:金和银纳米粒子的彩色图像表征和模糊C均值聚类和广义形状理论的特征提取

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We present a systematic study of the effect of size and shape on the spectral response of individual silver and gold nanoparticles. When developing nanoparticles as catalysts, their shape is very important. For a certain volume of material, nanoparticles make the best catalysts when they have a large surface area. It is a challenge to find the shape that has the largest surface area for its volume. The main focus of this paper is the interesting change in properties of the materials due to increase surface area to volume ratio. This type of characterization helps the researchers in size-based spectral tuning, biological labeling, and toxicity studies and suggest general protocols to address these problems.
机译:我们对大小和形状对单个银和金纳米粒子的光谱响应的影响进行了系统的研究。当开发纳米颗粒作为催化剂时,它们的形状非常重要。对于一定体积的材料,当纳米粒子具有较大的表面积时,它们是最佳的催化剂。找到具有最大表面积的体积是一个挑战。本文的主要重点是由于表面积与体积之比的增加而引起的材料性能的有趣变化。这种类型的表征有助于研究人员进行基于大小的光谱调谐,生物标记和毒性研究,并提出解决这些问题的通用方案。

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