使用深度学习技术检测犯罪现场物体

Nandhini T J, K. Thinakaran
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引用次数: 8

摘要

在过去的二十年里,对犯罪现场物品检测的研究蓬勃发展。研究人员一直专注于彩色图像,其中照明是一个至关重要的组成部分,因为这是计算机视觉中最紧迫的问题之一,其应用跨越监视,安全,医学等领域。然而,夜间监控是至关重要的,因为大多数安全问题无法用肉眼看到。这就是为什么记录一个黑暗的现场和识别犯罪现场的东西是至关重要的。即使天黑了,红外摄像机也是必不可少的。军事和民用部门都将受益于使用这种方法进行夜间导航。另一方面,红外照片有分辨率差、灯光效果和其他类似问题的问题。具有红外成像能力的监控摄像机是近年来研究和发展的热点。这项研究工作试图通过使用深度学习从犯罪现场获得的红外图像,为物体识别提供一个很好的模型。该模型在许多场景下进行了测试,包括中央处理单元(CPU)、Google COLAB和图形处理单元(GPU),并将其性能制成表格。
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Detection of Crime Scene Objects using Deep Learning Techniques
Research on the detection of objects at crime scenes has flourished in the last two decades. Researchers have been concentrating on color pictures, where lighting is a crucial component, since this is one of the most pressing issues in computer vision, with applications spanning surveillance, security, medicine, and more. However, night time monitoring is crucial since most security problems cannot be seen by the naked eye. That's why it's crucial to record a dark scene and identify the things at a crime scene. Even when its dark out, infrared cameras are indispensable. Both military and civilian sectors will benefit from the use of such methods for night time navigation. On the other hand, IR photographs have issues with poor resolution, lighting effects, and other similar issues. Surveillance cameras with infrared (IR) imaging capabilities have been the focus of much study and development in recent years. This research work has attempted to offer a good model for object recognition by using IR images obtained from crime scenes using Deep Learning. The model is tested in many scenarios including a central processing unit (CPU), Google COLAB, and graphics processing unit (GPU), and its performance is also tabulated.
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