Friday, 22 February 2019

Self-supervised Learning for Dense Depth Estimation in Monocular Endoscopy. (arXiv:1902.07766v1 [cs.CV])

We present a self-supervised approach to training convolutional neural networks for dense depth estimation from monocular endoscopy data without a priori modeling of anatomy or shading. Our method only requires monocular endoscopic video and a multi-view stereo method, e.g. structure from motion, to supervise learning in a sparse manner. Consequently, our method requires neither manual labeling nor patient computed tomography (CT) scan in the training and application phases. In a cross-patient experiment using CT scans as groundtruth, the proposed method achieved submillimeter root mean squared error. In a comparison study to a recent self-supervised depth estimation method designed for natural video on in vivo sinus endoscopy data, we demonstrate that the proposed approach outperforms the previous method by a large margin. The source code for this work is publicly available online at https://ift.tt/2Ixf4ES.



from cs updates on arXiv.org https://ift.tt/2STFKo8
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