IVCVJul 5, 2020

Self-supervised Depth Estimation to Regularise Semantic Segmentation in Knee Arthroscopy

arXiv:2007.02361v118 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of poor imaging conditions in knee arthroscopy for surgeons, offering an incremental improvement in segmentation accuracy.

The paper tackles the challenge of automatic semantic segmentation in knee arthroscopy by proposing a novel self-supervised monocular depth estimation method to regularize training, resulting in more accurate segmentation than a state-of-the-art approach using only semantic annotations.

Intra-operative automatic semantic segmentation of knee joint structures can assist surgeons during knee arthroscopy in terms of situational awareness. However, due to poor imaging conditions (e.g., low texture, overexposure, etc.), automatic semantic segmentation is a challenging scenario, which justifies the scarce literature on this topic. In this paper, we propose a novel self-supervised monocular depth estimation to regularise the training of the semantic segmentation in knee arthroscopy. To further regularise the depth estimation, we propose the use of clean training images captured by the stereo arthroscope of routine objects (presenting none of the poor imaging conditions and with rich texture information) to pre-train the model. We fine-tune such model to produce both the semantic segmentation and self-supervised monocular depth using stereo arthroscopic images taken from inside the knee. Using a data set containing 3868 arthroscopic images captured during cadaveric knee arthroscopy with semantic segmentation annotations, 2000 stereo image pairs of cadaveric knee arthroscopy, and 2150 stereo image pairs of routine objects, we show that our semantic segmentation regularised by self-supervised depth estimation produces a more accurate segmentation than a state-of-the-art semantic segmentation approach modeled exclusively with semantic segmentation annotation.

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