Development of intelligent tools for recognizing cockroaches in the forensic entomology context

María F. Hernández Luquin, E. Santacruz, Rocío A. Lizárraga Morales, C. N. Vázquez, Mariano Gamboa Zúñiga
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引用次数: 1

Abstract

The study of insects in forensic Entomology is very important for forensic sciences in making certain decisions. The insect identification on forensic Entomology is carried out by the analysis of their taxonomic features. Currently, the insect identification is time-consuming, since it requires specific processes which can be complicated for experts or students who do not have knowledge in Entomology. Developments on computer vision and computational intelligence techniques have facilitated applications of new identification methods based on image processing. Therefore, in this work is proposed a new approach based on extracting features from the images of cockroaches pronotum, such as: texture, color and shape for the classification accuracy of three species of cockroaches — Blattella germanica, Periplaneta Americana, and Arenivaga sp which are common in different areas of Mexico City (Urban and outdoor areas) and due to their relation with humans are important in forensic Entomology cases. The percentage of accuracy of identification using images achieved in this research was 96.2687% using an Artificial Neural Network (ANN) algorithm. The results obtained for the analysis demonstrate that features extracted are useful for the identification of Cockroaches species used.
在法医昆虫学背景下识别蟑螂的智能工具的发展
法医昆虫学中对昆虫的研究对法医科学决策具有重要意义。法医昆虫学的昆虫鉴定是通过分析昆虫的分类特征来进行的。目前,昆虫鉴定是耗时的,因为它需要特定的过程,对于没有昆虫学知识的专家或学生来说可能会很复杂。计算机视觉和计算智能技术的发展促进了基于图像处理的新识别方法的应用。因此,本文提出了一种基于提取蟑螂前角图像纹理、颜色和形状特征的新方法,用于对三种蟑螂-德国小蠊、美洲大蠊和Arenivaga sp .这三种蟑螂在墨西哥城不同地区(城市和室外地区)常见且与人类关系密切,在法医昆虫学案件中具有重要意义。使用人工神经网络(ANN)算法,本研究实现的图像识别准确率为96.2687%。分析结果表明,提取的特征对所用蟑螂种类的鉴定是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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