基于深度强化学习控制的液体透镜光学显微镜精确自动对焦。

IF 7.3 1区 工程技术 Q1 INSTRUMENTS & INSTRUMENTATION Microsystems & Nanoengineering Pub Date : 2024-12-24 DOI:10.1038/s41378-024-00845-8
Jing Zhang, Yong-Feng Fu, Hao Shen, Quan Liu, Li-Ning Sun, Li-Guo Chen
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引用次数: 0

摘要

显微成像是科学研究、生物医学研究和工程应用的重要工具,迫切需要系统小型化和快速、精确的自动对焦技术。然而,传统的显微镜和自动对焦方法在实现这一目标时面临硬件限制和缓慢的软件速度。为此,本文提出了一种基于深度强化学习的自动对焦(DRLAF)的自适应液体透镜显微镜系统。这项研究采用了一种定制的液体透镜,它具有快速变焦反应,被视为一种“代理”。原始图像被用作“状态”,电压调整代表“动作”。采用深度强化学习直接从捕获的图像中学习对焦策略,实现端到端自动对焦。与完全依赖清晰度评估作为模型标签或输入的方法相反,我们的方法涉及到目标奖励函数的开发,该函数已被证明可以显着提高显微镜自动对焦任务的性能。我们探索了多种动作组设计方法,将显微镜的自动对焦速度提高到平均3.15时间步长。此外,提出了随机抽样训练的并行“状态”数据集列表,增强了模型对未知样本的适应性,从而提高了模型的泛化能力。实验结果表明,基于DRLAF的液体透镜显微镜具有很高的鲁棒性,与传统搜索算法相比,速度提高了79%,成功率提高了97.2%,与其他深度学习方法相比,泛化能力增强。
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Precision autofocus in optical microscopy with liquid lenses controlled by deep reinforcement learning.

Microscopic imaging is a critical tool in scientific research, biomedical studies, and engineering applications, with an urgent need for system miniaturization and rapid, precision autofocus techniques. However, traditional microscopes and autofocus methods face hardware limitations and slow software speeds in achieving this goal. In response, this paper proposes the implementation of an adaptive Liquid Lens Microscope System utilizing Deep Reinforcement Learning-based Autofocus (DRLAF). The proposed study employs a custom-made liquid lens with a rapid zoom response, which is treated as an "agent." Raw images are utilized as the "state", with voltage adjustments representing the "actions." Deep reinforcement learning is employed to learn the focusing strategy directly from captured images, achieving end-to-end autofocus. In contrast to methodologies that rely exclusively on sharpness assessment as a model's labels or inputs, our approach involved the development of a targeted reward function, which has proven to markedly enhance the performance in microscope autofocus tasks. We explored various action group design methods and improved the microscope autofocus speed to an average of 3.15 time steps. Additionally, parallel "state" dataset lists with random sampling training are proposed which enhances the model's adaptability to unknown samples, thereby improving its generalization capability. The experimental results demonstrate that the proposed liquid lens microscope with DRLAF exhibits high robustness, achieving a 79% increase in speed compared to traditional search algorithms, a 97.2% success rate, and enhanced generalization compared to other deep learning methods.

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来源期刊
Microsystems & Nanoengineering
Microsystems & Nanoengineering Materials Science-Materials Science (miscellaneous)
CiteScore
12.00
自引率
3.80%
发文量
123
审稿时长
20 weeks
期刊介绍: Microsystems & Nanoengineering is a comprehensive online journal that focuses on the field of Micro and Nano Electro Mechanical Systems (MEMS and NEMS). It provides a platform for researchers to share their original research findings and review articles in this area. The journal covers a wide range of topics, from fundamental research to practical applications. Published by Springer Nature, in collaboration with the Aerospace Information Research Institute, Chinese Academy of Sciences, and with the support of the State Key Laboratory of Transducer Technology, it is an esteemed publication in the field. As an open access journal, it offers free access to its content, allowing readers from around the world to benefit from the latest developments in MEMS and NEMS.
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