用混合深度学习方法从左手腕 X 光图像中识别性别

Cüneyt Özdemir, M. Gedik, Hüdaverdi Küçüker, Yılmaz Kaya
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引用次数: 0

摘要

在法医调查中,性别、年龄、种族和身高等特征对于确定生物身份非常重要。在这项研究中,我们利用从年龄在 2 岁到 79 岁之间的个人收集的 13935 张图像,开发了基于深度学习的决策支持系统,用于从腕部X光片识别性别。我们利用了图像中所有区域的差异,如腕骨、桡骨、尺骨、骨骺、皮质和髓质。研究人员提出了一种从 X 光图像判定性别的混合模型,该模型将深度指标与适当层的迁移学习方法相结合。虽然已有文献报道了从不同国家获取的 X 光图像中判定性别的方法,但在土耳其还没有进行过此类研究。研究发现,性别鉴别对男性和女性产生了不同的结果。研究发现,10 至 40 岁女性的性别识别比男性更成功。然而,在 2-10 岁和 40-79 岁这两个年龄段,性别鉴别在男性中更为成功。最后,从图像中获得了拟议模型所关注区域的热图,发现男性和女性的性别识别重点区域是不同的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GENDER IDENTIFICATION FROM LEFT HAND-WRIST X-RAY IMAGES WITH A HYBRID DEEP LEARNING METHOD
In forensic investigations, characteristics such as gender, age, ethnic origin, and height are important in determining biological identity. In this study, we developed a deep learning-based decision support system for gender recognition from wrist radiographs using 13,935 images collected from individuals aged between 2 and 79 years. Differences in all regions of the images, such as carpal bones, radius, ulna bones, epiphysis, cortex, and medulla, were utilized. A hybrid model was proposed for gender determination from X-ray images, in which deep metrics were combined in appropriate layers of transfer learning methods. Although gender determination from X-ray images obtained from different countries has been reported in the literature, no such study has been conducted in Turkey. It was found that gender discrimination yielded different results for males and females. Gender identification was found to be more successful in females aged between 10 and 40 years than in males. However, for age ranges of 2-10 and 40-79 years, gender discrimination was found to be more successful in males. Finally, heat maps of the regions focused on by the proposed model were obtained from the images, and it was found that the areas of focus for gender discrimination were different between males and females.
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