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Crime Scene Prediction by Detecting Threatening Objects Using Convolutional Neural Network

机译:通过卷积神经网络检测威胁物体来预测犯罪现场

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Crime scene prediction without human intervention can have outstanding impact on computer vision. In this paper, we present CNN (Convolutional Neural Network) in the use of detect knife, blood and gun from an image. Detecting these threatening objects from image can give us a prediction whether a crime occurred or not and from where the image is taken. We emphasized on the accuracy of detection so that it hardly gives us wrong alert to ensure efficient use of the system. This model use Rectified Linear Unit (ReLU), Convolutional Layer, Fully connected layer and dropout function of CNN to reach a result for the detection. We use Tensorflow, a open source platform to implement CNN to achieve our expected output. The proposed model achieves 90.2% accuracy for the tested dataset.
机译:无需人工干预的犯罪现场预测可能会对计算机视觉产生显着影响。在本文中,我们介绍了利用图像中的检测刀,血和枪的CNN(卷积神经网络)。从图像中检测到这些威胁性物体可以使我们预测是否发生犯罪以及从何处拍摄图像。我们强调检测的准确性,因此它几乎不会给我们错误的警报,以确保系统的有效使用。该模型使用整流线性单元(ReLU),卷积层,全连接层和CNN的丢失功能来获得检测结果。我们使用Tensorflow,这是一个开放源码平台,用于实现CNN以实现我们的预期输出。所提出的模型对测试数据集的准确性达到90.2%。

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