Confocal Laser Endomicroscopy (CLE), an optical imaging technique allowing
non-invasive examination of the mucosa on a (sub)cellular level, has proven to
be a valuable diagnostic tool in gastroenterology and shows promising results
in various anatomical regions including the oral cavity. Recently, the
feasibility of automatic carcinoma detection for CLE images of sufficient
quality was shown. However, in real world data sets a high amount of CLE images
is corrupted by artifacts. Amongst the most prevalent artifact types are
motion-induced image deteriorations. In the scope of this work, algorithmic
approaches for the automatic detection of motion artifact-tainted image regions
were developed. Hence, this work provides an important step towards clinical
applicability of automatic carcinoma detection. Both, conventional machine
learning and novel, deep learning-based approaches were assessed. The deep
learning-based approach outperforms the conventional approaches, attaining an
AUC of 0.90