Dense depth estimation and 3D reconstruction of a surgical scene are crucial steps in computer assisted surgery. Recent work has shown that depth estimation from a stereo image pair could be solved with convolutional neural networks. However, most recent depth estimation models were trained on datasets with per-pixel ground truth. Such data is especially rare for laparoscopic imaging, making it hard to apply supervised depth estimation to real surgical applications. To overcome this limitation, we propose SADepth, a new self-supervised depth estimation method based on Generative Adversarial Networks. It consists of an encoder-decoder generator and a discriminator to incorporate geometry constraints during training. Multi-scale outputs from ...
©Recovering the 3D shape of the surgical site is crucial for multiple computer-assisted intervention...
Objective: The computation of anatomical information and laparoscope position is a fundamental block...
University of Minnesota M.S. thesis. 2020. Major: Computer Science. Advisor: Junaed Sattar. 1 comput...
Background: Learning-based methods have achieved remarkable performances on depth estimation. Howeve...
Background: Learning-based methods have achieved remarkable performances on depth estimation. Howeve...
Background: Learning-based methods have achieved remarkable performances on depth estimation. Howeve...
Background: Learning-based methods have achieved remarkable performances on depth estimation. Howeve...
Surgical instrument segmentation and depth estimation are crucial steps to improve autonomy in robot...
We present a novel self-supervised training framework with 3D displacement (3DD) module for accurate...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Depth estimation is an important challenge in the field of augmented reality. Supervised deep learni...
©Recovering the 3D shape of the surgical site is crucial for multiple computer-assisted intervention...
Objective: The computation of anatomical information and laparoscope position is a fundamental block...
University of Minnesota M.S. thesis. 2020. Major: Computer Science. Advisor: Junaed Sattar. 1 comput...
Background: Learning-based methods have achieved remarkable performances on depth estimation. Howeve...
Background: Learning-based methods have achieved remarkable performances on depth estimation. Howeve...
Background: Learning-based methods have achieved remarkable performances on depth estimation. Howeve...
Background: Learning-based methods have achieved remarkable performances on depth estimation. Howeve...
Surgical instrument segmentation and depth estimation are crucial steps to improve autonomy in robot...
We present a novel self-supervised training framework with 3D displacement (3DD) module for accurate...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Developing accurate and real-time algorithms for a non-invasive three-dimensional representation and...
Depth estimation is an important challenge in the field of augmented reality. Supervised deep learni...
©Recovering the 3D shape of the surgical site is crucial for multiple computer-assisted intervention...
Objective: The computation of anatomical information and laparoscope position is a fundamental block...
University of Minnesota M.S. thesis. 2020. Major: Computer Science. Advisor: Junaed Sattar. 1 comput...