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Active particle feedback control with a single-shot detection convolutional neural network

机译:具有单次检测卷积神经网络的主动粒子反馈控制

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摘要

The real-time detection of objects in optical microscopy allows their direct manipulation, which has recently become a new tool for the control, e.g., of active particles. For larger heterogeneous ensembles of particles, detection techniques are required that can localize and classify different objects with strongly inhomogeneous optical contrast at video rate, which is often difficult to achieve with conventional algorithmic approaches. We present a convolutional neural network single-shot detector which is suitable for real-time applications in optical microscopy. The network is capable of localizing and classifying multiple microscopic objects at up to 100 frames per second in images as large as $$416 imes 416$$ pixels, even at very low signal-to-noise ratios. The detection scheme can be easily adapted and extended, e.g., to new particle classes and additional parameters as demonstrated for particle orientation. The developed framework is shown to control self-thermophoretic active particles in a heterogeneous ensemble selectively. Our approach will pave the way for new studies of collective behavior in active matter based on artificial interaction rules.
机译:光学显微镜中对象的实时检测允许其直接操纵,该直接操纵最近成为控制的新工具,例如有源颗粒。对于粒子的较大异构集合,需要检测技术,其可以在视频速率下通过强烈不均匀的光学对比度定位和分类不同对象,这通常难以实现传统算法方法。我们提出了一种卷积神经网络单次检测器,适用于光学显微镜中的实时应用。该网络能够定位和分类多个微观对象,在每秒中最多100帧的图像,如216 IMES 416 $$像素,即使在非常低的信噪比下也是如此。检测方案可以容易地调整和扩展,例如,以粒子取向所证明的新粒度和附加参数。显示出开发的框架被示出为选择性地控制异质整体中的自热蒸发活性颗粒。我们的方法将为基于人为互动规则进行活跃物质中集体行为的新研究。

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