Nikita Efthymia
Science and Technology in Archaeology Research Center, The Cyprus Institute, 2121, Aglantzia, Nicosia, Cyprus.
J Forensic Sci. 2019 Jan;64(1):175-180. doi: 10.1111/1556-4029.13833. Epub 2018 Jun 1.
This paper presents an R script that quantifies the shape of selected cranial traits and automates sex estimation. The proposed functions were tested on two modern Greek assemblages. The discriminant variables input in the functions are calculated from a digital photograph of the lateral view of the cranium. The cranial outline is determined using the Canny edge detector and discriminant variables that quantify the shape of the glabella/frontal bone, mastoid process, and external occipital protuberance are computed. The best cross-validated results for pooled sexes in the Athens Collection range from 84.2% to 87.3%, and increase up to 93.9% when half of the sample is used for training and the rest for prediction, while correct classification for the Cretan material is 80-90% for optimum combinations of discriminant variables. The greatest advantage of the proposed method is its straightforward and time-efficient application.
本文展示了一个R脚本,该脚本可量化所选颅骨特征的形状并自动进行性别估计。所提出的函数在两个现代希腊样本上进行了测试。函数中输入的判别变量是根据颅骨侧视图的数码照片计算得出的。使用Canny边缘检测器确定颅骨轮廓,并计算量化眉间/额骨、乳突和枕外隆凸形状的判别变量。雅典样本中合并性别的最佳交叉验证结果在84.2%至87.3%之间,当一半样本用于训练而其余样本用于预测时,该结果可提高至93.9%,而对于克里特岛材料,判别变量的最佳组合的正确分类率为80 - 90%。所提方法的最大优点是其应用直接且高效省时。