Jabin Suraiya, Ahmad Sumaiya, Mishra Sarthak, Zareen Farhana Javed
Department of Computer Science, Faculty of Natural Sciences, Jamia Millia Islamia, New Delhi 110025, India.
Data Brief. 2020 Nov 28;33:106597. doi: 10.1016/j.dib.2020.106597. eCollection 2020 Dec.
The signature has long been in use for the user verification. These signatures have user specific features that differentiate the individual for authentication. The signature verification can be offline or online. The offline verification considers only the static features of the signatures through the signature image, while the online verification considers various dynamic features associated with the signature such as pen pressure, pen tilt angle, velocity, acceleration, pen up and pen down, etc at various time stamps which are recorded using special digitizing tablets such as Wacom devices (STU-500, STU-530 and DTU-1031) [1,14] etc. In todays scenario, smartphones are widely used world-wide, and come equipped with various sensors e.g. accelerometer, gyroscope, magnetometer, GPS, etc. able to capture sensor logs and have been used widely in the literature to capture the dynamics of users' behaviour while a signer signs on his smartphone. However, there is scarcity of publicly available databases for the online signatures collected using smartphone. In the present work, we describe biometric signature dataset iSignDB captured using smartphone. The iSignDB [6,10] consists of the genuine signature samples of a user as well as the skilled forgery samples where imposter was given multiple attempts to mimic the mannerisms of the original signer before giving skilled forgery samples. A total of 30 samples towards the genuine signature over 3 sessions with 10 samples per session while 15 samples of the skilled forgery with 5 samples per session were collected. Each of the session were at least 15 days apart. The iOS and Android based smartphones (namely iPhone7 and Redmi Note 7) were used for the data collection. The sensors used to collect this data, present in the smartphone are the gyroscope, magnetometer, GPS, and accelerometer. Smartphones having sensors any one lesser than these four, were not used for data collection, in order to have consistent number of features under each sample. They generate the following sensor readings: angular velocity, acceleration, orientation, geomagnetic field in the x, y, and z directions, position, which is collected using the MATLAB Mobile App installed in the smartphone, that sends the data to a licensed MathWorks cloud account in the form of a multitude of sensor logs. Each sample has image of the signature along with sensor readings. Some of the publicly available smartphone biometric signature databases are DooDB [2], MOBISIG [3], eBioSign DS 2 [7], etc. in which at least acceleration sensor reading is present but the iSignDB ensures these five of the sensor readings (acceleration, angular velocity, magnetic field, orientation, position) under each sample. This dataset can be successfully used to design smartphone biometric signature authentication system which is robust against a number of spoof attacks [11], [12], [13], [14]. As every user has a unique way of handling his/her smartphone which varies over different level of emotional intelligence of the user over a time period, this dataset can also be used for behavioural analysis of the users.
签名长期以来一直用于用户验证。这些签名具有用户特定的特征,可用于区分个人以进行身份验证。签名验证可以是离线的或在线的。离线验证仅通过签名图像考虑签名的静态特征,而在线验证则考虑与签名相关的各种动态特征,例如笔压力、笔倾斜角度、速度、加速度、笔抬起和笔落下等,这些特征在使用特殊数字化平板电脑(如Wacom设备(STU - 500、STU - 530和DTU - 1031)[1,14]等)记录的各个时间戳处。在当今的情况下,智能手机在全球范围内广泛使用,并配备了各种传感器,例如加速度计、陀螺仪、磁力计、GPS等,能够捕获传感器日志,并且在文献中已被广泛用于在签名者在其智能手机上签名时捕获用户行为的动态。然而,缺乏使用智能手机收集的在线签名的公开可用数据库。在本工作中,我们描述了使用智能手机捕获的生物特征签名数据集iSignDB。iSignDB [6,10]由用户的真实签名样本以及熟练伪造样本组成,在给出熟练伪造样本之前,冒名顶替者有多次尝试模仿原始签名者的行为习惯。总共收集了3个会话中的30个真实签名样本,每个会话10个样本,同时收集了15个熟练伪造样本,每个会话5个样本。每个会话至少相隔15天。基于iOS和Android的智能手机(即iPhone7和红米Note 7)用于数据收集。用于收集此数据的智能手机中存在的传感器是陀螺仪、磁力计、GPS和加速度计。任何少于这四个传感器的智能手机都未用于数据收集,以便在每个样本下具有一致数量的特征。它们生成以下传感器读数:角速度、加速度、方向、x、y和z方向的地磁场、位置,这些数据是使用安装在智能手机中的MATLAB Mobile应用程序收集的,该应用程序将数据以大量传感器日志的形式发送到持牌MathWorks云账户。每个样本都有签名图像以及传感器读数。一些公开可用的智能手机生物特征签名数据库是DooDB [2]、MOBISIG [3]、eBioSign DS 2 [7]等,其中至少存在加速度传感器读数,但iSignDB确保每个样本下有这五个传感器读数(加速度、角速度、磁场、方向、位置)。该数据集可成功用于设计针对多种欺骗攻击[11,12,13,14]具有鲁棒性的智能手机生物特征签名认证系统。由于每个用户处理其智能手机的方式独特,并且在一段时间内会因用户不同水平的情商而有所变化,因此该数据集也可用于用户的行为分析。