Annu Int Conf IEEE Eng Med Biol Soc. 2022 Jul;2022:3489-3494. doi: 10.1109/EMBC48229.2022.9871562.
Researchers have adopted mechanistic and learning-based approaches for tip force estimation on soft robotic catheters. Typically the literature attributes the mech-anistic methods with more accuracy while indicating the learning-based methods outpace in computational time. In this study, a previously validated mechanistic tip force estimation method was compared with four learning-based methods, i.e. support-vector-regression (SVR), random-forest (RF), Ad-aBoost (Ada), and deep neural network (DNN). The learning-based methods were trained on experimental data acquired from a robotic catheter, developed in-house. The accuracy of force estimation using the five methods were compared with the ground truth forces in a teleoperated catheter manipulation test. Moreover, the capability of the learning-based models in contact detection, i.e., detection of the onset of tip contact, were compared with the ground truth. The results showed that the mechanical model had a mean-absolute error (MAE) of 8.8 mN while the MAE of SVR, RF, Ada, and DNN were 5.6, 5.2, 5.3, and 5.1 mN, respectively. Moreover, the accuracy and precision of the mechanistic model for contact detection was 89.2% and 91.7%, respectively, while these were 97.0%, 97.7%, 97.6%,and 97% and 97.9%, 98.3%, 97.8%, and 98.8% for the SVR, RF, Ada, and DNN, respectively. The comparison showed that with hyper-parameter optimization the learning-based models surpassed the mechanistic model in accuracy and precision, while both method approaches revealed acceptable performance for the proposed application.
研究人员采用基于力学和基于学习的方法来估计软性机器人导管的尖端力。通常,文献认为力学方法更准确,而指示基于学习的方法在计算时间上更快。在这项研究中,比较了以前验证过的力学尖端力估计方法和四种基于学习的方法,即支持向量回归(SVR)、随机森林(RF)、Ad-aBoost(Ada)和深度神经网络(DNN)。基于学习的方法是在内部开发的机器人导管上获得的实验数据上进行训练的。在远程操作导管操作测试中,使用这五种方法进行力估计的准确性与地面真实力进行了比较。此外,还比较了基于学习的模型在接触检测方面的能力,即检测尖端接触的开始。结果表明,力学模型的平均绝对误差(MAE)为 8.8mN,而 SVR、RF、Ada 和 DNN 的 MAE 分别为 5.6、5.2、5.3 和 5.1mN。此外,力学模型的接触检测的准确性和精度分别为 89.2%和 91.7%,而 SVR、RF、Ada 和 DNN 的准确性和精度分别为 97.0%、97.7%、97.6%和 97%和 97.9%、98.3%、97.8%和 98.8%。比较表明,通过超参数优化,基于学习的模型在准确性和精度方面超过了力学模型,而这两种方法在提出的应用中都表现出了可接受的性能。