Dermoscopic Dark Corner Artifacts Removal: Friend or Foe?
Samuel William Pewton, Bill Cassidy, Connah Kendrick, Moi Hoon Yap

TL;DR
This study investigates the impact of dermoscopic dark corner artifacts on skin cancer classification, revealing that synthetic artifacts in training data can improve model robustness and proposing new heatmap analysis methods.
Contribution
It introduces a labeled dataset with dark corner artifacts, compares effects of inpainted and synthetic artifacts, and proposes a novel heatmap quantification approach.
Findings
Synthetic dark corner artifacts improve model performance.
Deep learning models can learn to ignore artifacts when trained with synthetic examples.
New heatmap analysis method enhances interpretability of model focus.
Abstract
One of the more significant obstacles in classification of skin cancer is the presence of artifacts. This paper investigates the effect of dark corner artifacts, which result from the use of dermoscopes, on the performance of a deep learning binary classification task. Previous research attempted to remove and inpaint dark corner artifacts, with the intention of creating an ideal condition for models. However, such research has been shown to be inconclusive due to lack of available datasets labelled with dark corner artifacts and detailed analysis and discussion. To address these issues, we label 10,250 skin lesion images from publicly available datasets and introduce a balanced dataset with an equal number of melanoma and non-melanoma cases. The training set comprises 6126 images without artifacts, and the testing set comprises 4124 images with dark corner artifacts. We conduct three…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management · Optical Coherence Tomography Applications · Skin Protection and Aging
