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基于增强现实的经颅多普勒超声检测导航算法

Transcranial Doppler Ultrasound Detection Navigation Algorithm Based on Augmented Reality

  • 摘要: 脑血流速度是评估脑血管是否健康的重要指标。临床上,医生通过经颅多普勒超声获取患者特定位置的脑血流速度。然而,由于传统的经颅多普勒超声检查无法直接观测到患者脑血管,医生只能凭借经验放置超声探头,因此测量效率低下,且测量准确性不稳定。针对该问题,本文提出了一种基于脑血管磁共振影像的经颅多普勒超声自主定位与实时导航算法。该算法首先通过增量式算法获取患者面部的稠密重建结果,随后通过面部的生物标记点的3D到3D匹配实现稠密重建结果与面部模型的初始配准,最后利用标记在患者面部的定位标记点实现位姿实时跟踪。本文提出一种基于RANSAC算法与全连接条件随机场的误匹配消除方法,有效降低了特征点误匹配对位姿估计的影响。此外,基于定位标志点,本文通过扩展卡尔曼滤波算法实现了患者面部位姿的实时跟踪。实验表明,本文算法基于脑血管磁共振影像,可以在误匹配点干扰条件下实现精确的初始位姿估计,并且估计结果显著优于现有PnP算法。

     

    Abstract: Cerebral blood flow velocity is an important parameter for assessing whether a patient has cerebrovascular spasm. Physicians measure cerebral blood flow velocity at specific locations using transcranial Doppler ultrasound (TCD). However, traditional TCD cannot directly visualize cerebral vessels, leaving physicians to rely on experience to position the ultrasound probe. This results in low measurement efficiency and inconsistent accuracy. To address this issue, this paper proposes an autonomous positioning and real-time navigation algorithm for TCD based on cerebral vascular magnetic resonance imaging (MRI). The algorithm first employs an incremental structure-from-motion (SfM) method to obtain a dense reconstruction of the patient’s face. Then, it achieves an initial registration between the dense reconstruction and the facial model through 3D-to-3D matching of facial biometric landmarks. Finally, real-time pose tracking is achieved using localization markers marked on the patient's face. This paper proposes a mismatch elimination method based on the RANSAC algorithm and fully connected conditional random fields (CRF), which effectively reduces the impact of feature point mismatches on pose estimation. Additionally, based on localization landmarks, this paper employs an extended Kalman filter (EKF) algorithm to achieve real-time tracking of the patient's facial pose. Experiments demonstrate that the proposed algorithm, based on cerebral vascular MRI, achieves accurate initial pose estimation even under outlier interference, with significantly better performance than existing PnP algorithms.

     

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