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首页> 外文期刊>Journal of ambient intelligence and humanized computing >An efficient comparison of two indexing-based deep learning models for the formation of a web-application based IoT-cloud network
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An efficient comparison of two indexing-based deep learning models for the formation of a web-application based IoT-cloud network

机译:基于Web应用的IOT云网络形成两个索引的深度学习模型的有效比较

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摘要

To search a particular image file amongst a large and massive encrypted database is very time consuming and hectic task. Many encryption and searching techniques have been used but they did not prove effective to support smart devices in order to provide input image and retrieve the required results on the personal gadgets of the user. Therefore, based on these facts, an intelligent and advanced multimodal system has been developed in this paper which is based on encrypted content-based search. Thus, in order to perform content-based search two type of novel deep learning techniques, namely cluster-based deep belief network and supervised similarity-based convolutional neural network have been used. The proposed models have been influenced by special indexing techniques to retrieve the best relevant and similar images in very less time. In order to secure the entire images of the database, confusion-diffusion technique based on chaotic map encryption has been used. In order to develop the internet of things model and to support smart device users, a web based application has also been developed using Apache Tomcat server and linking between java and MATLAB has been done using MATLAB engine. Analysis of many parameters like precision, recall, f-score, entropy, correlation coefficient and time has been done here. Also, the proposed system has been compared to many latest and related techniques by using two benchmark and renowned datasets namely WANG and COIL-100.
机译:要在大型和大规模的加密数据库中搜索特定的图像文件是非常耗时和忙碌的任务。已经使用了许多加密和搜索技术,但它们并未证明支持智能设备以提供输入图像并检索用户的个人小工具上所需的结果。因此,基于这些事实,本文已经开发了智能和高级的多模态系统,其基于加密的基于内容的搜索。因此,为了执行基于内容的搜索两种新颖的深度学习技术,即基于集群的深度信仰网络和监督的基于相似性的卷积神经网络。所提出的模型受到特殊索引技术的影响,可以在更短时间内检索最佳相关和类似图像。为了保护数据库的整个图像,已经使用了基于混沌映射加密的混淆扩散技术。为了开发内容模型并支持智能设备用户,还使用Apache Tomcat服务器开发了基于Web的应用程序,并使用Matlab引擎完成Java和Matlab之间的链接。分析了许多参数,如精度,召回,F分,熵,相关系数和时间已经完成。此外,所提出的系统已经通过使用两个基准和着名的数据集来与许多最新和相关技术进行了比较,即王和线圈100。

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