Enhancing Sex Estimation Accuracy with Cranial Angle Measurements and Machine Learning
Diana Toneva,
Silviya Nikolova,
Gennady Agre
et al.
Abstract:The development of current sexing methods largely depends on the use of adequate sources of data and adjustable classification techniques. Most sex estimation methods have been based on linear measurements, while the angles have been largely ignored, potentially leading to the loss of valuable information for sex discrimination. This study aims to evaluate the usefulness of cranial angles for sex estimation and to differentiate the most dimorphic ones by training machine learning algorithms. Computed tomograph… Show more
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