深度学习驱动的本能监视

Sunil Bhutada, P. Srija, S. Sushanth, A. Shireesha
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引用次数: 0

摘要

提供观测安全是一项非常枯燥和费力的工作。为了确定被捕获的演习是否异常或可疑,需要一个劳动力。在这里,我们将把一个结构放在一起,以自动完成审查视频侦察的任务。我们会定期查看监控录像,寻找任何异常活动,比如令人惊讶或可疑的活动。并向用户发送警报电子邮件,同时发送可疑帧和短信到手机号码。深度侦察的深度学习计算已经比以前有所改进。这些事态发展揭示了彻底侦察的一个关键模式,并有望显著提高效力。深度观察通常用于识别入室盗窃的证据、发现暴力和识别爆炸的可能性。我们将为这个项目提出一个时空自编码器,它依赖于三维卷积大脑结构。然后,解码器在编码器部分除去空间和瞬态数据后再现所述边缘。通过使用原始批次和复制批次之间的欧几里得距离记录再现不幸,区分了奇数事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Driven Instinctive Surveillance
It is a very boring and laborious job providing observation security. In order to determine whether the exercises that were caught were unusual or suspicious, a labour force is needed. Here, we’ll put together a structure to automate the task of reviewing video reconnaissance. We will regularly review the camera feed to look for any unusual activities like surprising or suspicious ones. and an automatic acknowledgment will be sent to the user with an alert email along with the suspicious frames and SMS to mobile number.  Deep learning computations for deep reconnaissance have improved from earlier encounters. These developments have revealed a key pattern in thorough reconnaissance and promise a significant increase in efficacy. Deep observation is typically used for things like identifying evidence of burglary, finding violence, and recognising explosion potential. We will propose a spatio-temporal auto-encoder for this project that relies on a 3D convolutional brain structure. The decoder then reproduces the edges after the encoder section has removed the spatial and transient data. By recording the recreation misfortune using the Euclidean distance between the original and replicated batch, the odd occurrences are distinguished.
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