Koulaouzidis Anastasios, Iakovidis Dimitris K, Yung Diana E, Mazomenos Evangelos, Bianchi Federico, Karagyris Alexandros, Dimas George, Stoyanov Danail, Thorlacius Henrik, Toth Ervin, Ciuti Gastone
Centre for Liver & Digestive Disorders, The Royal Infirmary of Edinburgh, Edinburgh, UK.
University of Thessaly, Department of Computer Science and Biomedical Informatics, Lamia, Greece.
Endosc Int Open. 2018 Feb;6(2):E205-E210. doi: 10.1055/s-0043-121882. Epub 2018 Feb 1.
Capsule endoscopy (CE) is invaluable for minimally invasive endoscopy of the gastrointestinal tract; however, several technological limitations remain including lack of reliable lesion localization. We present an approach to 3D reconstruction and localization using visual information from 2D CE images.
Colored thumbtacks were secured in rows to the internal wall of a LifeLike bowel model. A PillCam SB3 was calibrated and navigated linearly through the lumen by a high-precision robotic arm. The motion estimation algorithm used data (light falling on the object, fraction of reflected light and surface geometry) from 2D CE images in the video sequence to achieve 3D reconstruction of the bowel model at various frames. The ORB-SLAM technique was used for 3D reconstruction and CE localization within the reconstructed model. This algorithm compared pairs of points between images for reconstruction and localization.
As the capsule moved through the model bowel 42 to 66 video frames were obtained per pass. Mean absolute error in the estimated distance travelled by the CE was 4.1 ± 3.9 cm. Our algorithm was able to reconstruct the cylindrical shape of the model bowel with details of the attached thumbtacks. ORB-SLAM successfully reconstructed the bowel wall from simultaneous frames of the CE video. The "track" in the reconstruction corresponded well with the linear forwards-backwards movement of the capsule through the model lumen.
The reconstruction methods, detailed above, were able to achieve good quality reconstruction of the bowel model and localization of the capsule trajectory using information from the CE video and images alone.
胶囊内镜(CE)对于胃肠道的微创内镜检查具有重要价值;然而,仍存在一些技术限制,包括缺乏可靠的病变定位。我们提出了一种利用二维CE图像的视觉信息进行三维重建和定位的方法。
将彩色图钉成行固定在逼真的肠道模型内壁。对一台PillCam SB3进行校准,并通过高精度机器人手臂使其在管腔内线性移动。运动估计算法利用视频序列中二维CE图像的数据(照射在物体上的光、反射光的比例和表面几何形状),以在不同帧实现肠道模型的三维重建。ORB-SLAM技术用于在重建模型内进行三维重建和CE定位。该算法比较图像之间的点对以进行重建和定位。
当胶囊在模型肠道中移动时,每次通过可获得42至66个视频帧。CE估计移动距离的平均绝对误差为4.1±3.9厘米。我们的算法能够重建带有附着图钉细节的模型肠道的圆柱形形状。ORB-SLAM从CE视频的同步帧成功重建了肠壁。重建中的“轨迹”与胶囊通过模型管腔的线性前后移动高度吻合。
上述重建方法能够仅利用CE视频和图像中的信息,实现肠道模型的高质量重建以及胶囊轨迹的定位。