Machine Learning Group, Bielefeld University, 33619 Bielefeld, Germany.
Institute of Automatic Control, RWTH Aachen University, 52074 Aachen, Germany.
Sensors (Basel). 2021 Mar 17;21(6):2114. doi: 10.3390/s21062114.
Reliable object tracking that is based on video data constitutes an important challenge in diverse areas, including, among others, assisted surgery. Particle filtering offers a state-of-the-art technology for this challenge. Becaise a particle filter is based on a probabilistic model, it provides explicit likelihood values; in theory, the question of whether an object is reliably tracked can be addressed based on these values, provided that the estimates are correct. In this contribution, we investigate the question of whether these likelihood values are suitable for deciding whether the tracked object has been lost. An immediate strategy uses a simple threshold value to reject settings with a likelihood that is too small. We show in an application from the medical domain-object tracking in assisted surgery in the domain of Robotic Osteotomies-that this simple threshold strategy does not provide a reliable reject option for object tracking, in particular if different settings are considered. However, it is possible to develop reliable and flexible machine learning models that predict a reject based on diverse quantities that are computed by the particle filter. Modeling the task in the form of a regression enables a flexible handling of different demands on the tracking accuracy; modeling the challenge as an ensemble of classification tasks yet surpasses the results, while offering the same flexibility.
基于视频数据的可靠目标跟踪是包括辅助手术在内的多个领域的重要挑战。粒子滤波为这一挑战提供了一种最先进的技术。由于粒子滤波器基于概率模型,因此它提供了明确的似然值;从理论上讲,如果估计值正确,则可以根据这些值来确定是否可靠地跟踪了目标。在本研究中,我们探讨了这些似然值是否适合确定所跟踪的目标是否已丢失的问题。一种直接的策略是使用简单的阈值来拒绝具有太小似然值的设置。我们在来自医学领域的应用中展示了这一问题——在机器人截骨术领域的辅助手术中的目标跟踪——对于目标跟踪,特别是如果考虑不同的设置,则此简单的阈值策略并不能提供可靠的拒绝选项。然而,开发基于由粒子滤波器计算的各种数量的可靠且灵活的机器学习模型来进行拒绝预测是可行的。以回归的形式对任务进行建模可以灵活地处理对跟踪精度的不同要求;而将挑战建模为分类任务的集合则可以在提供相同灵活性的同时,超越结果。