AI Article Synopsis

  • Convolutional Neural Networks (CNN) excel in visual recognition tasks, including those in medical fields, but they often overfit the training data.
  • A common solution to overfitting is data augmentation, which includes techniques like rotation, scaling, and translation.
  • This study introduces a new approach where the CNN’s weights are rotated by a random angle during training, and it validates this method through empirical testing across various scenarios.

Article Abstract

Convolutional Neural Networks (CNN) have become the gold standard in many visual recognition tasks including medical applications. Due to their high variance, however, these models are prone to over-fit the data they are trained on. To mitigate this problem, one of the most common strategies, is to perform data augmentation. Rotation, scaling and translation are common operations. In this work we propose an alternative method to rotation-based data augmentation where the rotation transformation is performed inside the CNN architecture. In each training batch the weights of all convolutional layers are rotated by the same random angle. We validate our proposed method empirically showing its usefulness under different scenarios.

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Source
http://dx.doi.org/10.1109/EMBC.2019.8856448DOI Listing

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