Xióngbiao Luó, Ying Wan, Xiangjian He, Jie Yang, K. Mori
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引用次数: 4
Abstract
The paper proposes a diversity-enhanced condensation algorithm to address the particle impoverishment problem which stochastic filtering usually suffers from. The particle diversity plays an important role as it affects the performance of filtering. Although the condensation algorithm is widely used in computer vision, it easily gets trapped in local minima due to the particle degeneracy. We introduce a modified evolutionary computing method, adaptive differential evolution, to resolve the particle impoverishment under a proper size of particle population. We apply our proposed method to endoscope tracking for estimating three-dimensional motion of the endoscopic camera. The experimental results demonstrate that our proposed method offers more robust and accurate tracking than previous methods. The current tracking smoothness and error were significantly reduced from (3.7, 4.8) to (2.3 mm, 3.2 mm), which approximates the clinical requirement of 3.0 mm.
针对随机滤波中存在的粒子贫困化问题,提出了一种多样性增强凝聚算法。粒子多样性是影响过滤性能的重要因素。虽然凝聚算法在计算机视觉中得到了广泛的应用,但由于粒子的简并性,它很容易陷入局部极小值。提出了一种改进的进化计算方法——自适应差分进化,以解决在适当的粒子种群规模下的粒子贫困化问题。我们将该方法应用于内窥镜跟踪,用于估计内窥镜相机的三维运动。实验结果表明,该方法具有较好的鲁棒性和准确性。电流跟踪平滑度和误差从(3.7,4.8)显著降低到(2.3 mm, 3.2 mm),接近临床要求的3.0 mm。