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A Learning-Based Approach for Fast and Robust Vessel Tracking in Long Ultrasound Sequences

机译:一种基于学习的快速血管跟踪在长超声序列中的快速血管跟踪方法

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We propose a learning-based method for robust tracking in long ultrasound sequences for image guidance applications. The framework is based on a scale-adaptive block-matching and temporal realignment driven by the image appearance learned from an initial training phase. The latter is introduced to avoid error accumulation over long sequences. The vessel tracking performance is assessed on long 2D ultrasound sequences of the liver of 9 volunteers under free breathing. We achieve a mean tracking accuracy of 0.96 mm. Without learning, the error increases significantly (2.19 mm, p<0.001).
机译:我们提出了一种基于学习的鲁棒序列的鲁棒跟踪方法,用于图像引导应用。 该框架基于由初始训练阶段从初始训练阶段学习的图像外观驱动的刻度 - 自适应块匹配和时间重新调整。 引入后者以避免在长序列上累积误差。 在自由呼吸下的9个志愿者的肝脏的长2D超声序列中评估血管跟踪性能。 我们达到0.96毫米的平均跟踪精度。 不学习,误差显着增加(2.19毫米,P <0.001)。

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