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A Security Risk Model for Online Banking System

机译:网上银行系统的安全风险模型

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We are living in an era, where the security of our data has become a huge issue. The services of cyber are the most entertaining and time-saving things in one's life. Though, people save their data on the cloud, which has been managed by the cyber. Cyber-security plays an important role in this matter. This is the open challenge for the security because many intruders are there who can attack the data and hack the details of the user by the server. If we will see around, then we will find many cases which include cyber-crime. This has become a very genuine concern to secure our datasets which are available on the cloud. Our research includes the security of the datasets which will include intruder detection that can be occurring anywhere on the earth. This has become very important to protect the data from intruders, for this intruder detection should be the most important key to get identified. If we don't know who is the intruder, then how we will get to know who is stealing the data which has been secured by using much biometric security, fingerprints, passwords, OTPs etc. intruder detection has become very important, especially on mobile objects - airplanes, ships, etc. As we know the problem then only we are able to find the solution. To prevent this, we are using the methods from machine learning, biometric recognition, data learning or hybrid methods. These are going to be the handle of the system that can help to secure the data from intruders by using best optimization techniques to get precise data. We proposed a model for the banking system, whereby using biometric impressions and digital signatures to make every transaction possible by bank's customer. This proposes the security for the Smart Online Banking System (SOBS) by using the biometric prints, it can become more secure and reduces a lot of threats can be made by an intruder.
机译:我们生活在一个时代,在这个时代,我们的数据安全已成为一个大问题。网络服务是一生中最有趣,最省时的事情。不过,人们将数据保存在由网络进行管理的云中。网络安全在此问题上起着重要作用。这是安全性面临的开放挑战,因为那里有许多入侵者可以攻击数据并通过服务器入侵用户的详细信息。如果我们四处看看,那么我们会发现许多案件,其中包括网络犯罪。这已经成为保护我们的云上数据集的真正关注点。我们的研究包括数据集的安全性,其中包括可以在地球上任何地方进行的入侵者检测。这对于保护数据免遭入侵者变得非常重要,因为入侵者检测应该是最重要的识别钥匙。如果我们不知道谁是入侵者,那么我们将如何知道谁正在窃取通过使用大量生物特征安全性,指纹,密码,OTP等进行保护的数据。入侵者检测已经变得非常重要,尤其是在移动设备上对象-飞机,轮船等。我们知道问题所在,只有我们才能找到解决方案。为了防止这种情况,我们使用了机器学习,生物特征识别,数据学习或混合方法中的方法。这些将成为系统的句柄,通过使用最佳优化技术来获取精确数据,可以帮助保护来自入侵者的数据。我们为银行系统提出了一个模型,该模型使用生物特征印象和数字签名使银行的客户能够进行每笔交易。这就提出了通过使用生物特征识别指纹来保护智能在线银行系统(SOBS)的安全性,它可以变得更加安全,并减少入侵者可以构成的许多威胁。

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