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Automated Detection and Categorization of Genital Injuries Using Digital Colposcopy

机译:使用数字阴道镜对生殖器损伤进行自动检测和分类

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Despite the existence of patterns able to discriminate between consensual and non-consensual intercourse, the relevance of genital lesions in the corroboration of a legal rape complaint is currently under debate in many countries. The testimony of the physicians when assessing these lesions has been questioned in court due to several factors (e.g. a lack of comprehensive knowledge of lesions, wide spectrum of background area, among others). Thereby, it is relevant to provide automated tools to support the decision process in an objective manner. In this work, we compare traditional handcrafted features and deep learning techniques in the automated processing of colposcopic images for genital injury detection. Positive results where achieved by both paradigms in segmentation and classification subtasks, being traditional and deep models the best strategy for each subtask type respectively.
机译:尽管存在能够区分同意性和非同意性交的方式,但在许多国家,有关确诊生殖器损害与合法性强奸申诉的相关性目前仍在争论中。由于多种因素(例如,缺乏对病变的全面知识,背景范围广等),医生在评估这些病变时的证词在法庭上受到质疑。因此,提供自动化工具以客观地支持决策过程是很重要的。在这项工作中,我们在阴道镜图像的自动处理中比较了传统的手工功能和深度学习技术,以进行生殖器损伤检测。通过细分和分类子任务中的两种范式都获得了积极的结果,传统的和深度的模型分别为每种子任务类型的最佳策略。

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