Elvira Sukma Wahyuni, Alvita Widya, Kustiawan Putri, Nisa Agustin Pratiwi Pelu, Firdaus, I. A. Wiraagni
{"title":"Image Processing-Based Application for Determining Wound Types in Forensic Medical Cases","authors":"Elvira Sukma Wahyuni, Alvita Widya, Kustiawan Putri, Nisa Agustin Pratiwi Pelu, Firdaus, I. A. Wiraagni","doi":"10.25077/jnte.v13n1.1148.2024","DOIUrl":null,"url":null,"abstract":"Wounds result from physical violence that damages the continuity of body tissues and are frequently observed in forensic medicine and medicolegal science. In forensic medicine and medicolegal science, wounds play a significant role in creating a medicolegal examination and report (VeR) for deceased individuals and living victims. However, research findings indicate that the quality of clinical forensic descriptive results in VeR needs to improve in several hospitals in Indonesia. Meanwhile, high-quality VeR results are crucial in determining penalties for perpetrators in court, and poor VeR results can hinder the legal process. The application of information technology in medicine has yielded numerous tools that can assist experts in carrying out their duties. Likewise, clinical forensics, a generally conservative forensic pathology practice, can be enhanced through image-processing techniques and machine learning. Digital technology support for forensic cases has been available previously, such as in forensic photography; however, its application still needs improvement, and further development is required. This study applied a Yolo V4-based machine learning and image processing algorithm to classify and detect types of wounds. This algorithm was chosen for its high speed and accuracy in classification and detection tasks. The research results showed that the learning model's performance, measured in accuracy, precision, recall, and average F1 score, reached 92%. Usability testing showed that the system performed well and could be helpful with minor improvements.","PeriodicalId":30660,"journal":{"name":"Jurnal Nasional Teknik Elektro","volume":"62 13","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-03-29","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Jurnal Nasional Teknik Elektro","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.25077/jnte.v13n1.1148.2024","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Wounds result from physical violence that damages the continuity of body tissues and are frequently observed in forensic medicine and medicolegal science. In forensic medicine and medicolegal science, wounds play a significant role in creating a medicolegal examination and report (VeR) for deceased individuals and living victims. However, research findings indicate that the quality of clinical forensic descriptive results in VeR needs to improve in several hospitals in Indonesia. Meanwhile, high-quality VeR results are crucial in determining penalties for perpetrators in court, and poor VeR results can hinder the legal process. The application of information technology in medicine has yielded numerous tools that can assist experts in carrying out their duties. Likewise, clinical forensics, a generally conservative forensic pathology practice, can be enhanced through image-processing techniques and machine learning. Digital technology support for forensic cases has been available previously, such as in forensic photography; however, its application still needs improvement, and further development is required. This study applied a Yolo V4-based machine learning and image processing algorithm to classify and detect types of wounds. This algorithm was chosen for its high speed and accuracy in classification and detection tasks. The research results showed that the learning model's performance, measured in accuracy, precision, recall, and average F1 score, reached 92%. Usability testing showed that the system performed well and could be helpful with minor improvements.
伤口源于身体暴力,破坏了身体组织的连续性,在法医学和法医科学中经常被观察到。在法医学和法医科学中,伤口在为死者和活着的受害者制作法医检查和报告(VeR)中发挥着重要作用。然而,研究结果表明,印尼几家医院在 VeR 方面的临床法医描述结果质量有待提高。同时,高质量的法医鉴定结果对于在法庭上确定对犯罪者的处罚至关重要,而糟糕的法医鉴定结果可能会阻碍法律程序。信息技术在医学领域的应用产生了许多工具,可以帮助专家履行职责。同样,通过图像处理技术和机器学习,临床法医学这种通常比较保守的法医病理学实践也可以得到加强。法医案件以前就有数字技术支持,如法医摄影;但其应用仍有待改进,需要进一步发展。本研究采用基于 Yolo V4 的机器学习和图像处理算法对伤口类型进行分类和检测。选择该算法是因为它在分类和检测任务中速度快、准确性高。研究结果表明,以准确率、精确度、召回率和平均 F1 分数衡量,学习模型的性能达到了 92%。可用性测试表明,该系统性能良好,稍加改进即可发挥作用。