Modular Neural Network Approaches for Surgical Image Recognition
Nosseiba Ben Salem, Younes Bennani, Joseph Karkazan, Abir Barbara,, Charles Dacheux, Thomas Gregory

TL;DR
This paper explores modular neural network architectures for surgical image recognition, demonstrating improved performance and interpretability, and applies self-training for data labeling and segmentation in shoulder arthroscopy images.
Contribution
It introduces and evaluates modular learning architectures for surgical image classification and applies self-training for data labeling and segmentation tasks.
Findings
Modular learning improves classification performance over non-modular systems.
Weighted modular approach achieves near-perfect classification accuracy.
Self-training effectively labels and segments shoulder arthroscopy images.
Abstract
Deep learning-based applications have seen a lot of success in recent years. Text, audio, image, and video have all been explored with great success using deep learning approaches. The use of convolutional neural networks (CNN) in computer vision, in particular, has yielded reliable results. In order to achieve these results, a large amount of data is required. However, the dataset cannot always be accessible. Moreover, annotating data can be difficult and time-consuming. Self-training is a semi-supervised approach that managed to alleviate this problem and achieve state-of-the-art performances. Theoretical analysis even proved that it may result in a better generalization than a normal classifier. Another problem neural networks can face is the increasing complexity of modern problems, requiring a high computational and storage cost. One way to mitigate this issue, a strategy that has…
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Taxonomy
TopicsShoulder Injury and Treatment · Shoulder and Clavicle Injuries
