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通过将分类算法应用于分离的微藻的数字图像处理的发展趋势。

Trends in digital image processing of isolated microalgae by incorporating classification algorithm.

机构信息

Zhejiang Provincial Key Laboratory for Subtropical Water Environment and Marine Biological Resources Protection, Wenzhou University, Wenzhou 325035, China; Department of Chemical and Environmental Engineering, Faculty of Science and Engineering, University of Nottingham Malaysia, Jalan Broga, Semenyih 43500, Selangor Darul Ehsan, Malaysia.

Department of Chemical Engineering and Materials Science, Yuan Ze University, Taoyuan, Taiwan.

出版信息

Biotechnol Adv. 2023 Mar-Apr;63:108095. doi: 10.1016/j.biotechadv.2023.108095. Epub 2023 Jan 3.

Abstract

Identification of microalgae species is of importance due to the uprising of harmful algae blooms affecting both the aquatic habitat and human health. Despite this occurence, microalgae have been identified as a green biomass and alternative source due to its promising bioactive compounds accumulation that play a significant role in many industrial applications. Recently, microalgae species identification has been conducted through DNA analysis and various microscopy techniques such as light, scanning electron, transmission electron, and atomic force -microscopy. The aforementioned procedures have encouraged researchers to consider alternate ways due to limitations such as costly validation, requiring skilled taxonomists, prolonged analysis, and low accuracy. This review highlights the potential innovations in digital microscopy with the incorporation of both hardware and software that can produce a reliable recognition, detection, enumeration, and real-time acquisition of microalgae species. Several steps such as image acquisition, processing, feature extraction, and selection are discussed, for the purpose of generating high image quality by removing unwanted artifacts and noise from the background. These steps of identification of microalgae species is performed by reliable image classification through machine learning as well as deep learning algorithms such as artificial neural networks, support vector machines, and convolutional neural networks. Overall, this review provides comprehensive insights into numerous possibilities of microalgae image identification, image pre-processing, and machine learning techniques to address the challenges in developing a robust digital classification tool for the future.

摘要

由于有害藻类大量繁殖影响水生栖息地和人类健康,因此识别微藻种类非常重要。尽管如此,微藻已被确定为一种绿色生物质和替代资源,因为它具有有前途的生物活性化合物积累,在许多工业应用中发挥着重要作用。最近,通过 DNA 分析和各种显微镜技术(如光、扫描电子、透射电子和原子力显微镜)对微藻物种进行了鉴定。由于验证成本高、需要有经验的分类学家、分析时间长和准确性低等限制,上述程序促使研究人员考虑其他替代方法。本综述强调了数字显微镜的潜在创新,包括硬件和软件的结合,可以可靠地识别、检测、计数和实时获取微藻物种。讨论了几个步骤,例如图像采集、处理、特征提取和选择,目的是通过从背景中去除不需要的伪影和噪声来生成高质量的图像。通过机器学习以及深度学习算法(如人工神经网络、支持向量机和卷积神经网络)进行可靠的图像分类,实现微藻物种的识别。总的来说,本综述全面介绍了微藻图像识别、图像预处理和机器学习技术的多种可能性,以解决未来开发强大数字分类工具的挑战。

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