Computer vision for high-throughput analysis of pickering emulsions†

IF 2.8 3区 化学 Q3 CHEMISTRY, PHYSICAL Soft Matter Pub Date : 2025-02-28 DOI:10.1039/D4SM01252F
Kieran D. Richards, Ella Comish and Rachel C Evans
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Abstract

The quanitative analysis of solid-particle stabilized emulsions, known as Pickering emulsions, is crucial for their application in food, cosmetics, and pharmaceuticals. However, size analysis of these emulsion droplets, with diameters ranging from 5 to 500 μm, is challenging due to their non-uniform spatial and polydisperse size-distribution. Here, we investigate the application of the circle-Hough transform (CHT), a well-established computer-vision technique characterised by its ability to detect circular features in noisy images, for the seldom explored quantitative assessment of droplet size from optical microscopy images. This is particularly relevant to images where emulsions are captured in a single 2D focal plane. To implement the CHT with optical images, we have developed an open-source software application (“Hough-Scan”), which incorporates a user-friendly graphical interface for ease of use, and a tiling algorithm allowing localised regions of circles to be processed in parallel and improving computational efficiency. Using Hough-Scan, we demonstrate that the CHT has superior precision, recall and accuracy for the identification of Pickering emulsion droplets and determination of their size, compared to both manual identification and established computer vision methods. Our study demonstrates that CHT implementation using Hough-Scan can significantly increase the ease of image analysis for a diverse range of Pickering emulsion systems of varying spatial and size distribution, as well as visual artefacts common to example microscopy images.

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用于酸洗乳剂高通量分析的计算机视觉。
对被称为皮克林乳液的固体颗粒稳定乳液进行定量分析,对其在食品、化妆品和药品中的应用至关重要。然而,这些乳液液滴的直径在 5 到 500 μm 之间,由于其空间分布不均匀且多分散,因此对其进行粒度分析极具挑战性。在此,我们研究了圆-霍夫变换(CHT)的应用,这是一种成熟的计算机视觉技术,其特点是能够在嘈杂的图像中检测出圆形特征,用于从光学显微镜图像中对液滴大小进行定量评估,但这一技术却鲜有人涉足。这尤其适用于在单个二维焦平面上捕捉乳剂的图像。为了在光学图像上实现 CHT,我们开发了一个开源软件应用程序("Hough-Scan"),其中包含一个用户友好的图形界面,便于使用,还包含一个平铺算法,可以并行处理圆的局部区域,提高计算效率。我们使用 Hough-Scan 证明,与人工识别和成熟的计算机视觉方法相比,CHT 在识别 Pickering 乳化液液滴和确定其大小方面具有更高的精确度、召回率和准确性。我们的研究表明,使用 Hough-Scan 实现 CHT 可以大大提高图像分析的便捷性,适用于不同空间和尺寸分布的皮克林乳剂系统,以及显微镜图像中常见的视觉伪影。
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来源期刊
Soft Matter
Soft Matter 工程技术-材料科学:综合
CiteScore
6.00
自引率
5.90%
发文量
891
审稿时长
1.9 months
期刊介绍: Soft Matter is an international journal published by the Royal Society of Chemistry using Engineering-Materials Science: A Synthesis as its research focus. It publishes original research articles, review articles, and synthesis articles related to this field, reporting the latest discoveries in the relevant theoretical, practical, and applied disciplines in a timely manner, and aims to promote the rapid exchange of scientific information in this subject area. The journal is an open access journal. The journal is an open access journal and has not been placed on the alert list in the last three years.
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