基于显微相衬图像优化和深度学习的活性污泥微生物自动视觉检测。

IF 1.5 4区 工程技术 Q3 MICROSCOPY
Dan Liang, Yuming Yao, Minjie Ye, Qinze Luo, Jiale Chu
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引用次数: 0

摘要

活性污泥中微生物的种类和数量直接关系到污水处理系统的稳定性和效率。提出了一种基于显微相衬图像优化和深度学习的污泥微生物检测方法。首先,构建了包含8种微生物的数据集,设计了基于单样本和多样本处理的扩增策略,解决了样本不足和分布不均匀的问题;其次,提出了一种基于融合方差的相衬图像质量优化算法,该算法可以有效地提高标准差、熵和检测性能。第三,设计了一种轻量级的YOLOv8n-SimAM模型,该模型引入了SimAM注意力模块来抑制复杂背景干扰,增强对目标物体的关注。利用基于多尺度信息融合卷积模块的检测头实现了网络的轻量化。此外,还提出了一种新的损失函数IW-IoU,以提高系统的泛化能力和整体性能。对比实验和烧蚀实验表明,该方法在快速准确检测微生物靶点方面具有巨大的应用潜力。与基线模型相比,该方法在显著减小模型尺寸的同时,检测精度提高了12.35%,运行速度提高了37.9帧/秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic visual detection of activated sludge microorganisms based on microscopic phase contrast image optimisation and deep learning

The types and quantities of microorganisms in activated sludge are directly related to the stability and efficiency of sewage treatment systems. This paper proposes a sludge microorganism detection method based on microscopic phase contrast image optimisation and deep learning. Firstly, a dataset containing eight types of microorganisms is constructed, and an augmentation strategy based on single and multisamples processing is designed to address the issues of sample deficiency and uneven distribution. Secondly, a phase contrast image quality optimisation algorithm based on fused variance is proposed, which can effectively improve the standard deviation, entropy, and detection performance. Thirdly, a lightweight YOLOv8n-SimAM model is designed, which introduces a SimAM attention module to suppress the complex background interference and enhance attentions to the target objects. The lightweight of the network is realised using a detection head based on multiscale information fusion convolutional module. In addition, a new loss function IW-IoU is proposed to improve the generalisation ability and overall performance. Comparative and ablative experiments are conducted, demonstrating the great application potential for rapid and accurate detection of microbial targets. Compared to the baseline model, the proposed method improves the detection accuracy by 12.35% and hastens the running speed by 37.9 frames per second while evidently reducing the model size.

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来源期刊
Journal of microscopy
Journal of microscopy 工程技术-显微镜技术
CiteScore
4.30
自引率
5.00%
发文量
83
审稿时长
1 months
期刊介绍: The Journal of Microscopy is the oldest journal dedicated to the science of microscopy and the only peer-reviewed publication of the Royal Microscopical Society. It publishes papers that report on the very latest developments in microscopy such as advances in microscopy techniques or novel areas of application. The Journal does not seek to publish routine applications of microscopy or specimen preparation even though the submission may otherwise have a high scientific merit. The scope covers research in the physical and biological sciences and covers imaging methods using light, electrons, X-rays and other radiations as well as atomic force and near field techniques. Interdisciplinary research is welcome. Papers pertaining to microscopy are also welcomed on optical theory, spectroscopy, novel specimen preparation and manipulation methods and image recording, processing and analysis including dynamic analysis of living specimens. Publication types include full papers, hot topic fast tracked communications and review articles. Authors considering submitting a review article should contact the editorial office first.
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