Review of Face Recognition Techniques for Secured Cloud Data Surveillance using Machine Learning

Saikrishna Muddala, C. Ramakrishnan
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引用次数: 2

Abstract

Face recognition techniques are used in the cloud environment for securing the cloud data from intrusion activities. Face recognition techniques help detect any kind of intrusion activities and in protecting cloud data from intrusion activities. Face recognition techniques help extract and secure the information embedded into cloud data by using different machine learning-based methods. In a cloud environment, recognition techniques can be used in identifying accurate information from the image as well as speech signals. Machine learning and deep learning-based techniques help increase the accuracy of recognition in the cloud environment. The main aim of this research is to identify efficient face recognition techniques that can be implemented in the cloud environment for securing data stored on the cloud network. Cloud data, behaviour detection, and recognition are the major components that help develop an efficient system to be implemented in a cloud environment for achieving secure data surveillance and to secure data stored on the cloud environment from any network intrusion activities. Analysis and evaluation of these components help in developing an efficient system based on machine learning techniques that help in recognizing different activities and in detecting intruder activities in the cloud environment. Classification of all the system components helps in identifying efficient machine learning-based face recognition system for obtaining secure cloud data surveillance.
使用机器学习进行安全云数据监控的人脸识别技术综述
在云环境中使用人脸识别技术来保护云数据免受入侵活动的侵害。人脸识别技术有助于检测任何类型的入侵活动,并保护云数据免受入侵活动的影响。人脸识别技术通过使用不同的基于机器学习的方法,帮助提取和保护嵌入云数据中的信息。在云环境中,识别技术可以用于从图像和语音信号中识别准确的信息。机器学习和基于深度学习的技术有助于提高云环境中识别的准确性。本研究的主要目的是确定可在云环境中实施的有效人脸识别技术,以保护存储在云网络上的数据。云数据、行为检测和识别是帮助开发在云环境中实施的有效系统的主要组成部分,以实现安全的数据监控,并保护存储在云环境中的数据免受任何网络入侵活动的影响。对这些组件的分析和评估有助于开发基于机器学习技术的高效系统,该系统有助于识别云环境中的不同活动和检测入侵者活动。对所有系统组件进行分类有助于识别高效的基于机器学习的人脸识别系统,以获得安全的云数据监控。
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