Raval Jay, Jadav Nilesh Kumar, Tanwar Sudeep, Pau Giovanni, Alqahtani Fayez, Tolba Amr
Department of Computer Science and Engineering, Institute of Technology, Nirma University, Ahmedabad, Gujarat, 382481, India.
Department of Computer Engineering - AI, ML, & DS, Marwadi University, Rajkot, 360003, India.
Sci Rep. 2025 May 1;15(1):15279. doi: 10.1038/s41598-025-97879-3.
In the era of rapid societal modernization, the issue of crime stands as an intrinsic facet, demanding our attention and consideration. As our communities evolve and adopt technological advancements, the dynamic landscape of criminal activities becomes an essential aspect that requires careful examination and proactive approaches for public safety application. In this paper, we proposed a collaborative approach to detect crime patterns and criminal emotions with the aim of enhancing judiciary decision-making. For the same, we utilized two standard datasets - a crime dataset comprised of different features of crime. Further, the emotion dataset has 135 classes of emotion that help the AI model to efficiently find criminal emotions. We adopted a convolutional neural network (CNN) to get first trained on crime datasets to bifurcate crime and non-crime images. Once the crime is detected, criminal faces are extracted using the region of interest and stored in a directory. Different CNN architectures, such as LeNet-5, VGGNet, RestNet-50, and basic CNN, are used to detect different emotions of the face. The trained CNN models are used to detect criminal emotion and enhance judiciary decision-making. The proposed framework is evaluated with different evaluation metrics, such as training accuracy, loss, optimizer performance, precision-recall curve, model complexity, training time, and inference time. In crime detection, the CNN model achieves a remarkable accuracy of 92.45% and in criminal emotion detection, LeNet-5 outperforms other CNN architectures by offering an accuracy of 98.6%.
在社会快速现代化的时代,犯罪问题是一个内在的方面,需要我们关注和思考。随着我们的社区不断发展并采用技术进步,犯罪活动的动态格局成为一个重要方面,需要仔细审视并采取积极措施以应用于公共安全。在本文中,我们提出了一种协作方法来检测犯罪模式和犯罪情绪,旨在加强司法决策。为此,我们使用了两个标准数据集——一个由不同犯罪特征组成的犯罪数据集。此外,情绪数据集有135种情绪类别,有助于人工智能模型有效地找出犯罪情绪。我们采用卷积神经网络(CNN)首先在犯罪数据集上进行训练,以区分犯罪图像和非犯罪图像。一旦检测到犯罪,就使用感兴趣区域提取犯罪嫌疑人的面部,并存储在一个目录中。不同的CNN架构,如LeNet-5、VGGNet、RestNet-50和基本CNN,用于检测面部的不同情绪。经过训练的CNN模型用于检测犯罪情绪并加强司法决策。所提出的框架使用不同的评估指标进行评估,如训练准确率、损失、优化器性能、精确召回曲线、模型复杂度、训练时间和推理时间。在犯罪检测中,CNN模型的准确率达到了92.45%,在犯罪情绪检测中,LeNet-5的准确率为98.6%,优于其他CNN架构。