Penza Veronica, Ciullo Andrea S, Moccia Sara, Mattos Leonardo S, De Momi Elena
Department of Advanced Robotics, Istituto Italiano di Tecnologia, 16163, Genova, Italy.
Department of Electronics Information and Bioengineering, Politecnico di Milano, 20133, Milano, Italy.
Int J Med Robot. 2018 Oct;14(5):e1926. doi: 10.1002/rcs.1926. Epub 2018 Jul 3.
3D reconstruction algorithms are of fundamental importance for augmented reality applications in computer-assisted surgery. However, few datasets of endoscopic stereo images with associated 3D surface references are currently openly available, preventing the proper validation of such algorithms. This work presents a new and rich dataset of endoscopic stereo images (EndoAbS dataset).
The dataset includes (i) endoscopic stereo images of phantom abdominal organs, (ii) a 3D organ surface reference (RF) generated with a laser scanner and (iii) camera calibration parameters. A detailed description of the generation of the phantom and the camera-laser calibration method is also provided.
An estimation of the overall error in creation of the dataset is reported (camera-laser calibration error 0.43 mm) and the performance of a 3D reconstruction algorithm is evaluated using EndoAbS, resulting in an accuracy error in accordance with state-of-the-art results (<2 mm).
The EndoAbS dataset contributes to an increase the number and variety of openly available datasets of surgical stereo images, including a highly accurate RF and different surgical conditions.
三维重建算法对于计算机辅助手术中的增强现实应用至关重要。然而,目前公开可用的带有相关三维表面参考的内窥镜立体图像数据集很少,这妨碍了此类算法的正确验证。这项工作展示了一个新的、丰富的内窥镜立体图像数据集(EndoAbS数据集)。
该数据集包括(i)腹部模拟器官的内窥镜立体图像,(ii)用激光扫描仪生成的三维器官表面参考(RF),以及(iii)相机校准参数。还提供了模拟物生成和相机-激光校准方法的详细描述。
报告了数据集创建过程中的总体误差估计(相机-激光校准误差0.43毫米),并使用EndoAbS评估了三维重建算法的性能,得出的精度误差与最新结果一致(<2毫米)。
EndoAbS数据集有助于增加公开可用的手术立体图像数据集的数量和种类,包括高精度的RF和不同的手术条件。