Smart Surveillance: A Review & Survey Through Deep Learning Techniques for Detection & Analysis

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Abstract

Big data applications are consuming most of the space in industry and research area. Among the widespread examples of big data, the role of video streams from CCTV cameras is equally important as other sources like social media data, sensor data, agriculture data, medical data and data evolved from space research. Surveillance videos have a major contribution in unstructured big data. CCTV cameras are implemented in all places where security having much importance. Manual surveillance seems tedious and time consuming. Security can be defending in different terms in different contexts like theft identification, violence detection, chances of explosion etc. In crowded public places the term security covers almost all type of abnormal events. Among them violence detection is difficult to handle since it involves group activity. The anomalous or abnormal activity analysis in a crowd video scene is very difficult due to several real world constraints. The paper includes a deep rooted survey which starts from object recognition, action recognition, crowd analysis and finally violence detection in a crowd environment. Majority of the papers reviewed in this survey are based on deep learning technique. Various deep learning methods are compared in terms of their algorithms and models. The main focus of this survey is application of deep learning techniques in detecting the exact count, involved persons and the happened activity in a large crowd at all climate conditions. Paper discusses the underlying deep learning implementation technology involved in various crowd video analysis methods. Real time processing, an important issue which is yet to be explored more in this field is also considered. Not many methods are there in handling all these issues simultaneously. The issues recognized in existing methods are identified and summarized. Also, future direction is given to reduce the obstacles identified. The survey provides a bibliographic summary of papers from Science-direct, IEEE Xplore and ACM digital library.
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智能监控:综述& &;深度学习技术在检测中的应用综述分析
大数据应用占据了工业和科研领域的大部分空间。在广泛使用的大数据示例中,来自闭路电视摄像机的视频流的作用与社交媒体数据、传感器数据、农业数据、医疗数据和从空间研究演变而来的数据等其他来源同样重要。监控视频对非结构化大数据有重要贡献。闭路电视摄像机在所有重视安全的地方都得到了应用。人工监控似乎既乏味又耗时。安全可以在不同的情况下以不同的方式进行防御,如盗窃识别、暴力检测、爆炸机会等。在拥挤的公共场所,“安全”一词几乎涵盖了所有类型的异常事件。其中暴力侦查由于涉及群体活动,处理起来比较困难。由于现实世界的限制,对人群视频场景中的异常或异常活动进行分析是非常困难的。本文从对象识别、动作识别、人群分析到人群环境中的暴力检测进行了深入的研究。本调查中回顾的大多数论文都是基于深度学习技术的。比较了各种深度学习方法的算法和模型。本调查的主要重点是应用深度学习技术在所有气候条件下检测大量人群中的确切数量,涉及的人员和发生的活动。本文讨论了各种人群视频分析方法中涉及的底层深度学习实现技术。本文还讨论了实时处理,这是该领域有待进一步探索的一个重要问题。同时处理所有这些问题的方法并不多。确定和总结现有方法中确认的问题。此外,还给出了减少已确定的障碍的未来方向。该调查提供了来自Science-direct、IEEE explore和ACM数字图书馆的论文书目摘要。
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