论文标题
不希望的物理效应在准确的形状传感中使用偏心FBG的秘密作用
The secret role of undesired physical effects in accurate shape sensing with eccentric FBGs
论文作者
论文摘要
光纤形状传感器已在从医疗工具跟踪到工业应用程序中实现了各种导航任务的独特进步。偏心纤维bragg光栅(FBG)是便宜且易于制作的形状传感器,通常会被简单的设置审问。但是,使用低成本审问系统来实现这种基于强度的准分布传感器,会引起传感器信号的进一步并发症。因此,偏心的FBG无法准确估计复杂的多弯曲形状。在这里,我们提出了一种新的技术来克服这些局限性,并在怪异的FBG传感器中提供准确,精确的形状估计。我们研究了通常在基于强度的纤维传感器中消除的弯曲光纤中最重要的弯曲诱导的作用。这些效果包含形状变形信息,并具有更高的空间分辨率,我们现在可以使用深度学习技术提取。我们设计了一个基于卷积神经网络的深度学习模型,该网络经过训练,可以预测传感器的光谱。我们还提供了视觉上的解释,突出了其强度与制定形状预测更相关的波长元素。这些发现表明,深度学习技术受益于以复杂方式影响所需信号的弯曲诱导的效果。这是迈向廉价但准确的纤维传感解决方案的第一步。
Fiber optic shape sensors have enabled unique advances in various navigation tasks, from medical tool tracking to industrial applications. Eccentric fiber Bragg gratings (FBG) are cheap and easy-to-fabricate shape sensors that are often interrogated with simple setups. However, using low-cost interrogation systems for such intensity-based quasi-distributed sensors introduces further complications to the sensor's signal. Therefore, eccentric FBGs have not been able to accurately estimate complex multi-bend shapes. Here, we present a novel technique to overcome these limitations and provide accurate and precise shape estimation in eccentric FBG sensors. We investigate the most important bending-induced effects in curved optical fibers that are usually eliminated in intensity-based fiber sensors. These effects contain shape deformation information with a higher spatial resolution that we are now able to extract using deep learning techniques. We design a deep learning model based on a convolutional neural network that is trained to predict shapes given the sensor's spectra. We also provide a visual explanation, highlighting wavelength elements whose intensities are more relevant in making shape predictions. These findings imply that deep learning techniques benefit from the bending-induced effects that impact the desired signal in a complex manner. This is the first step toward cheap yet accurate fiber shape sensing solutions.