LSB Steganography Strengthen Footprint Biometric Template

Israa Mohammed Khudher
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引用次数: 2

Abstract

Steganography is the science of hiding secret data inside another data type as image and text. This data is known as carrier data; it lets people interconnect secretly. This suggested paper aims to design a Steganography Biometric Imaging System (SBIS). The system is constructed in a hybridization manner between image processing, steganography, and artificial intelligence techniques. During image processing techniques the system receives RGB foot-tip images and preprocesses the images to get foot-template images. Then a chain code is illustrated for personal information within the foot-template image by Least Significant Bit (LSB). Accurate recognition operation is performed by artificial bee colony optimization (ABC). The automated system was tested on a live-took about ninety RGB foot-tip images known as the cover image and clustered to nine clusters that authorized visual database. The Least Significant Bit method transforms the foot template to a stego image and is stored on a stego visual database for further use. Features database was constructed for each stego footprint template. This step converts the image to quantities data and stored in an Excel feature database file. The quantities data was used at the recognition stage to produce either a notification of rejection or acceptance. At the acceptance choice, the corresponding stego foot-tip template occurrence was retrieved, it is corresponding individual data were extracted and cluster position on the stego template visual database. Indeed, the foot-tip template is displayed. The suggested work consequence is affected by the optimum feature selection via the artificial bee colony optimization usage and clustering, which declined the complication and subsequently raised the recognition rate to 93.65 %. This rate competes out the technique over others’ techniques in the field of biometric recognition.
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LSB隐写增强足迹生物识别模板
隐写术是将秘密数据隐藏在另一种数据类型(如图像和文本)中的科学。这些数据被称为载波数据;它让人们秘密地相互联系。本文旨在设计一种隐写生物识别成像系统(SBIS)。该系统以图像处理、隐写和人工智能技术的混合方式构建。在图像处理技术中,系统接收RGB脚尖图像,并对图像进行预处理,得到脚模板图像。然后用最小有效位(LSB)表示脚模板图像中的个人信息链码。采用人工蜂群优化(ABC)进行精确识别操作。该自动化系统在现场拍摄的大约90张RGB脚尖图像上进行了测试,这些图像被称为封面图像,并聚集到9个集群中,授权视觉数据库。最低有效位法将脚模板转换为隐写图像,并存储在隐写可视化数据库中供进一步使用。为每个stego足迹模板构建特征数据库。此步骤将图像转换为数量数据并存储在Excel功能数据库文件中。在识别阶段使用数量数据来产生拒绝或接受通知。在接受选择时,检索相应的步进足尖模板出现点,提取相应的个体数据并在步进模板可视化数据库中聚类定位。确实,显示了脚尖模板。利用人工蜂群优化和聚类方法选择最优特征,降低了复杂性,使识别率提高到93.65%。这一速度使该技术在生物识别领域胜过其他技术。
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