Jonmohamadi, Y.Ali, S.Liu, F.Roberts, J.Crawford, R.Carneiro, G.Pandey, A.K.DeBruijne, M.Cattin, P.C.Cotin, S.Padoy, N.Speidel, S.Zheng, Y.Essert, C.2021-11-222021-11-222021Lecture Notes in Artificial Intelligence, 2021 / DeBruijne, M., Cattin, P.C., Cotin, S., Padoy, N., Speidel, S., Zheng, Y., Essert, C. (ed./s), vol.12902 LNCS, pp.383-39397830308719560302-97431611-3349https://hdl.handle.net/2440/133344Minimally invasive surgery (MIS) has many documented advantages, but the surgeon’s limited visual contact with the scene can be problematic. Hence, systems that can help surgeons navigate, such as a method that can produce a 3D semantic map, can compensate for the limitation above. In theory, we can borrow 3D semantic mapping techniques developed for robotics, but this requires finding solutions to the following challenges in MIS: 1) semantic segmentation, 2) depth estimation, and 3) pose estimation. In this paper, we propose the first 3D semantic mapping system from knee arthroscopy that solves the three challenges above. Using out-of-distribution non-human datasets, where pose could be labeled, we jointly train depth+pose estimators using self-supervised and supervised losses. Using an in-distribution human knee dataset, we train a fully-supervised semantic segmentation system to label arthroscopic image pixels into femur, ACL, and meniscus. Taking testing images from human knees, we combine the results from these two systems to automatically create 3D semantic maps of the human knee. The result of this work opens the pathway to the generation of intra-operative 3D semantic mapping, registration with pre-operative data, and robotic-assisted arthroscopy. Source code: https://github.com/YJonmo/EndoMapNet.en© Springer Nature Switzerland AG 20213D semantic mapping; endoscopy; deep learning3D semantic mapping from arthroscopy using out-of-distribution pose and depth and in-distribution segmentation trainingConference paper10.1007/978-3-030-87196-3_362021-11-22591647Liu, F. [0000-0003-0355-2006]Carneiro, G. [0000-0002-5571-6220]