通过眼动追踪提取视觉特征,用于显著性驱动的2D/3D配准

A. Chung, F. Deligianni, Xiao-Peng Hu, Guang-Zhong Yang
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引用次数: 13

摘要

提出了一种从实验眼动追踪数据中提取视觉显著性的新技术。眼球追踪系统用于确定一组人类观察者在观看一组视频图像时认为哪些特征是显著的。利用这些信息,通过将每个观察到的视频图像转换为特征空间表示来获得生物学启发的显著性图。通过基于背景图像内视觉特征的相对丰度和眼动追踪扫描路径上的视觉特征的特征归一化过程,确定与视觉注意相关的特征。然后将这些特征投影回图像域,以确定未见视频图像感兴趣的空间区域。通过内窥镜视频与计算机断层扫描数据的二维到三维图像配准的特征对应,证明了该方法的优缺点。采用生物衍生的显著性图来提供形成2D/3D配准方法核心的图像相似性度量。结果表明,通过仅处理由显著性图确定的感兴趣的选择性区域,可以大大减少渲染开销。与使用非显著性相似度量相比,可以在不明显降低配准精度的情况下显著提高姿态估计效率。
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Visual feature extraction via eye tracking for saliency driven 2D/3D registration
This paper presents a new technique for extracting visual saliency from experimental eye tracking data. An eye-tracking system is employed to determine which features that a group of human observers considered to be salient when viewing a set of video images. With this information, a biologically inspired saliency map is derived by transforming each observed video image into a feature space representation. By using a feature normalisation process based on the relative abundance of visual features within the background image and those dwelled on eye tracking scan paths, features related to visual attention are determined. These features are then back projected to the image domain to determine spatial areas of interest for unseen video images. The strengths and weaknesses of the method are demonstrated with feature correspondence for 2D to 3D image registration of endoscopy videos with computed tomography data. The biologically derived saliency map is employed to provide an image similarity measure that forms the heart of the 2D/3D registration method. It is shown that by only processing selective regions of interest as determined by the saliency map, rendering overhead can be greatly reduced. Significant improvements in pose estimation efficiency can be achieved without apparent reduction in registration accuracy when compared to that of using a non-saliency based similarity measure.
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