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引用次数: 0

摘要

本研究旨在调查并将多个检测系统整合到一个监控系统中,并检查输入的视频是否包含并捕获了各种现实的异常情况。本文提出了利用正常和异常视频学习各种异常的方法,并将其应用到新模型中。实时目标检测是一个巨大的,充满活力和复杂的计算机视觉领域,旨在目标识别和识别。对象检测使用开源计算机视觉来检测类对象的语义对象,开源计算机视觉是一个编程函数库,主要针对数字图像和视频中的实时计算机视觉进行训练。这种实时目标检测的主要目的是帮助人们克服他们的困难。实时物体检测在跟踪物体、视频监控、行人检测、数人、自动驾驶汽车、面部检测、运动跟踪等领域都有应用。这是通过卷积、概率神经网络等实现的,这些都是深度学习的代表性工具。这个项目作为一个辅助工具,为那些想要照顾家里、外面和周围的一切,只是为了他们充分的安全期望的人。从小型房屋到大型工业,监控是必须的,因为它们满足了我们的安全方面,因为盗窃和入室盗窃一直是一个问题。通过将这种监控理念与物联网和一些机器学习相结合,这将是一个主要的产品。拟议的项目是一个基于分析和检测技术的单一自主监视系统。拟议的系统能够同时监测所有行动,并立即准确地向有关官员发出警报。
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Deep Surveillance System
This study has been undertaken to investigate and implement multiple detection systems into a single surveillance system and check whether the input videos may comprise and capture a variety of realistic anomalies or not. In this paper, we propose to learn various anomalies by exploiting both normal and anomalous videos and implemented it to new model. Real time object detection is a vast, vibrant and sophisticated area of computer vision aimed towards object identification and recognition. Object detection detects the semantic objects of a class objects using Open source Computer Vision, which is a library of programming functions mainly trained towards real time computer vision in digital images and videos. The main aim behind this real time object detection is to help the peoples to overcome their difficulty. Real time object detection finds its uses in the areas like tracking objects, video surveillance, pedestrian detection, people counting, self-driving cars, face detection, tracking in sports and many more. This is achieved using Convolution, Probabilistic Neural Networks, etc. which are a representative tool of Deep learning. This project acts as an aiding tool for peoples who wants to take care of everything inside, outside, and around their house just for their full security expectations. Surveillance is a must for small houses to large-scale industries as they fulfil our safety aspects because theft and burglary have always been a problem. By combining this Surveillance idea to IoT and some Machine Learning stuff this will be a major product. The proposed project is a single autonomous surveillance system, based on analysis and detection technology. The proposed system is capable of monitoring all actions at once and alerts the concerned officials immediately and precisely.
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