相差显微图像的活性污泥微生物伪装目标检测
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沈阳化工大学信息工程学院 沈阳 110021

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TP391;TN0

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2024年辽宁省教育厅高等学校基本科研项目(LJ212410149042)、2023年度辽宁省研究生教育教学改革研究项目(2023-132)资助


Camouflaged object detection for activated sludge microorganisms in phase contrast microscopic images
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College of Information Engineering, Shenyang University of Chemical Technology,Shenyang 110021, China

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    摘要:

    准确监测活性污泥微生物对于保持污水处理系统的稳定运行至关重要。然而,微生物因其半透明形态和与周围环境的高度相似性而具有伪装特性,使得传统的检测方法表现不佳。针对活性污泥微生物伪装性、目标尺度多样性和复杂背景下边界模糊的问题,提出了一种基于多尺度感知和边缘增强的伪装目标检测方法。该方法通过多尺度特征感知模块的并行处理和逐步扩大感受野来提取丰富的上下文信息,以增强多尺度特征表示;利用边缘感知增强模块融合低层边缘细节与高层语义信息,获取边缘特征;再通过注意力引导模块融合边缘特征与多尺度特征,引导网络关注边缘的位置信息;使用上下文聚合模块自顶向下逐级聚合多层次特征,以进一步细化预测结果并生成预测图像。在伪装目标检测公共数据集和自建活性污泥微生物伪装数据集上,本方法在评价指标S值、加权F值和E值上分别提升了2.2%、4.1%、2.1%和1.2%、2.2%、0.6%。实验结果表明,本方法在各数据集上均取得了优于其他模型的性能。

    Abstract:

    Accurate monitoring of activated sludge microorganisms is critical for maintaining the stable operation of wastewater treatment systems. However, due to their semi-transparent morphology and high similarity to the surrounding environment, these microorganisms exhibit camouflaged characteristics, rendering traditional detection methods ineffective. To address the camouflage characteristics of activated sludge microorganisms, the diversity of object scales, and the ambiguity of boundaries in complex contexts, this paper proposes a camouflaged object detection method based on multi-scale awareness and edge enhancement. The proposed method employs a multi-scale feature aware module to extract rich contextual information through parallel processing and progressive expansion of the receptive field, thereby enhancing multi-scale feature representation. An edge-aware enhancement module is introduced to fuse low-level edge details with high-level semantic information for more accurate edge feature extraction. These edge features are then integrated with the multi-scale features through an attention-guided feature module, enabling the network to focus on the positional information of edges. Finally, a context aggregation module is used to progressively aggregate multi-level features in a top-down manner, further refining the prediction and generating the final output. On the benchmark camouflaged object detection dataset and the self-constructed activated sludge microorganism camouflage dataset, the proposed method achieves improvements of 2.2%, 4.1%, and 2.1%, and 1.2%, 2.2%, and 0.6% in terms of the evaluation metrics S-measure, weighted F-measure, and E-measure, respectively. Experimental results demonstrate that the proposed method achieves superior performance over other models across all datasets.

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赵立杰,金明溪,方一凡,黄明忠.相差显微图像的活性污泥微生物伪装目标检测[J].电子测量技术,2026,49(4):227-235

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  • 在线发布日期: 2026-04-16
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