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Domain gap in adapting self-supervised depth estimation methods for stereo-endoscopy

机译:适应立体内窥镜检查自我监控深度估计方法的域间隙

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In endoscopy, depth estimation is a task that potentially helps in quantifying visual information for better scene understanding.A plethora of depth estimation algorithms have been proposed in the computer vision community.The endoscopic domain however, differs from the typical depth estimation scenario due to differences in the setup and nature of the scene.Furthermore, it is unfeasible to obtain ground truth depth information owing to an unsuitable detection range of off-the-shelf depth sensors and difficulties in setting up a depth-sensor in a surgical environment.In this paper, an existing self-supervised approach, called?Monodepth?[1], from the field of autonomous driving is applied to a novel dataset of stereo-endoscopic images from reconstructive mitral valve surgery.While it is already known that endoscopic scenes are more challenging than outdoor driving scenes, the paper performs experiments to quantify the comparison, and describe the domain gap and challenges involved in the transfer of these methods.
机译:在内窥镜检查中,深度估计是可能有助于量化更好的场景的可视信息的任务。在计算机视觉社区中已经提出了一种深度估计算法。然而,内窥镜域因差异而不同于典型的深度估计场景。在场景的设置和性质中.Furtheroore,由于在手术环境中设置深度传感器的不适合检测范围和难以在外科环境中建立深度传感器时,可以获得地面真相深度信息是不可行的。纸张,一种叫做的自主驱动领域的现有自我监督方法,从自主驾驶领域应用于重建二尖瓣手术的立体内窥镜图像的新型数据集。当它已经知道内窥镜场景更多挑战性比户外驾驶场景比户外驾驶场景有挑战性,对量化进行了实验,并描述了所涉及的领域差距和挑战e转移这些方法。

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