Ajad Chhatkuli, A. Bartoli, Abed C. Malti, T. Collins
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引用次数: 15
摘要
增强现实(AR)可以改善外科医生的信息传递。在腹腔镜手术中,AR的主要目标是在现场腹腔镜视频中提供多模态信息。对于妇科腹腔镜,子宫的三维重建及其与术前数据的可变形配准是AR的主要问题。shape - of - shading (SfS)和帧间配准需要准确识别子宫区域、手术工具造成的闭塞、镜面和其他组织。我们提出了一种级联的患者特异性实时分割方法来识别这四个重要区域。我们使用基于颜色的高斯混合模型(GMM)来分割工具,并使用更精细的颜色和纹理模型来分割子宫。通过饱和度测试获得了镜面率。我们发现我们的分割改善了SfS和子宫的帧间配准。
Augmented Reality (AR) can improve the information delivery to surgeons. In laparosurgery, the primary goal of AR is to provide multimodal information overlaid in live laparoscopic videos. For gynecologic laparoscopy, the 3D reconstruction of uterus and its deformable registration to preoperative data form the major problems in AR. Shape-from-Shading (SfS) and inter-frame registration require an accurate identification of the uterus region, the occlusions due to surgical tools, specularities, and other tissues. We propose a cascaded patient-specific real-time segmentation method to identify these four important regions. We use a color based Gaussian Mixture Model (GMM) to segment the tools and a more elaborate color and texture model to segment the uterus. The specularities are obtained by a saturation test. We show that our segmentation improves SfS and inter-frame registration of the uterus.