Task-Oriented Network Design for Visual Tracking and Motion Filtering of Needle Tip Under 2D Ultrasound

Wanquan Yan;Raymond Shing-Yan Tang;Shing Shin Cheng
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Abstract

Needle tip tracking under ultrasound (US) imaging is critical for accurate lesion targeting in US-guided percutaneous procedures. While most state-of-the-art trackers have relied on complex network architecture for enhanced performance, the compromised computational efficiency prevents their real-time implementation. Pure visual trackers are also limited in addressing the drift errors caused by temporary needle tip disappearance. In this paper, a compact, task-oriented visual tracker, consisting of an appearance adaptation module and a distractor suppression module, is first designed before it is integrated with a motion filter, namely TransKalman, that leverages the Transformer network for Kalman filter gain estimation. The ablation study shows that the mean tracking success rate (i.e. error <3mm in 95% video frames) of the visual tracker increases by 25% compared with its baseline model. The complete tracking system, integrating the visual tracker and TransKalman, outperforms other existing trackers by at least 5.1% in success rate and 47% in tracking speed during manual needle manipulation experiments in ex-vivo tissue. The proposed real-time tracking system will potentially be integrated in both manual and robotic procedures to reduce operator dependence and improve targeting accuracy during needle-based diagnostic and therapeutic procedures.
面向任务的二维超声针尖视觉跟踪与运动滤波网络设计
超声(US)成像下的针尖跟踪对于超声引导的经皮手术中准确定位病变至关重要。虽然大多数最先进的跟踪器都依赖于复杂的网络架构来增强性能,但计算效率的降低阻碍了它们的实时实现。纯视觉跟踪器在解决暂时针尖消失引起的漂移误差方面也受到限制。本文首先设计了一个紧凑的、面向任务的视觉跟踪器,由外观自适应模块和干扰抑制模块组成,然后将其与运动滤波器TransKalman集成,该运动滤波器利用Transformer网络进行卡尔曼滤波器增益估计。消融研究表明,与基线模型相比,视觉跟踪器的平均跟踪成功率(即95%视频帧误差<3mm)提高了25%。在离体组织手工针刺实验中,集成了视觉跟踪器和TransKalman的完整跟踪系统的成功率和跟踪速度比其他现有跟踪器至少高出5.1%和47%。所提出的实时跟踪系统将潜在地集成到人工和机器人程序中,以减少对操作员的依赖,并提高针基诊断和治疗过程中的靶向准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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