Convolutional Neural Network Based Criminal Detection

H. Verma, Siddharth Lotia, Ashutosh Kumar Singh
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引用次数: 8

Abstract

Various recent advancements in deep learning models have greatly boosted the performance of semantic pattern recognition using images. Various state estimation of an individual like emotional state and other certain character features or traits can be estimated from the facial images. With this motivation, in this work we are attempting to infer criminal tendency or (crime prediction/detection) from facial images by using the learning capabilities of various deep learning architectures. More precisely two type of deep learning models we have used in this study: standard convolutional neural network(CNN) architecture and pre-trained CNN architectures, namely VGG-16, VGG-19, and Incep-tionV3. We have done a performance comparative analysis among these models for efficiently capturing criminal traits from a human face. The efficacy of the above deep learning models was evaluated on a public database, National Institute of Standards and Technology (NIST). To avoid any discrepancies, we have only used male images in this work. It was found that VGG CNN models are best performing models, especially in a limited data scenario producing the classification accuracy of 99.5% in identifying criminal faces.
基于卷积神经网络的犯罪侦查
最近深度学习模型的各种进展极大地提高了使用图像进行语义模式识别的性能。从面部图像中可以估计出个体的各种状态,如情绪状态和其他某些性格特征或特征。有了这个动机,在这项工作中,我们试图通过使用各种深度学习架构的学习能力,从面部图像中推断犯罪倾向或(犯罪预测/检测)。更准确地说,我们在本研究中使用了两种深度学习模型:标准卷积神经网络(CNN)架构和预训练CNN架构,即VGG-16、VGG-19和inception - tionv3。我们对这些模型进行了性能比较分析,以有效地从人脸中捕捉犯罪特征。上述深度学习模型的有效性在美国国家标准与技术研究所(NIST)的公共数据库上进行了评估。为了避免出现差异,我们在这个作品中只使用了男性形象。研究发现,VGG CNN模型是表现最好的模型,特别是在有限的数据场景下,对罪犯面孔的识别准确率达到99.5%。
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