A publicly available newborn ear shape dataset for medical diagnosis of auricular deformities
Liu-Jie Ren,
Fei Luo,
Zhi-Wei Yang
et al.
Abstract:Early and accurate diagnosis of ear deformities in newborns is crucial for an effective non-surgical correction treatment, since this commonly seen ear anomalies would affect aesthetics and cause mental problems if untreated. It is not easy even for experienced physicians to diagnose the auricular deformities of newborns and the classification of the sub-types, because of the rich bio-metric features embedded in the ear shape. Machine learning has already been introduced to analyze the auricular shape. However… Show more
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