A smart home is grounded on the sensors that endure automation, safety, and structural integration. The security mechanism in digital setup possesses vibrant prominence and the biometric facial recognition system is novel addition to accrue the smart home features. Understanding the implementation of such technology is the outcome of user behavior modeling. However, there is the paucity of empirical research that explains the role of cognitive, functional, and social aspects of end-users acceptance behavior towards biometric facial recognition systems at homes. Therefore, a causal research survey was conducted to comprehend the behavioral intention towards the use of a biometric facial recognition system. Technology Acceptance Model (TAM)was implied with Perceived System Quality (PSQ) and Social Influence (SI)to hypothesize the conceptual framework. Data was collected from 475respondents through online questionnaires. Structural Equation Modeling(SEM) and Artificial Neural Network (ANN) were employed to analyze the surveyed data. The results showed that all the variables of the proposed framework significantly affected the behavioral intention to use the system. The PSQ appeared as the noteworthy predictor towards biometric facial recognition system usability through regression and sensitivity analyses. A multi-analytical approach towards understanding the technology user behavior will support the efficient decision-making process in Human-centric computing.
翻译:智能家庭以维持自动化、安全和结构整合的传感器为基础,智能家庭以智能家庭为基础。数字结构中的安全机制具有生机勃勃的显要地位,生物鉴别面部识别系统是新颖的附加,以积累智能家庭特征。了解这种技术的实施是用户行为模型的结果。然而,缺乏经验研究来解释最终用户接受行为认知、功能和社会方面对于家庭生物鉴别面部识别系统的作用。因此,进行了因果研究调查,以了解使用生物鉴别面部识别系统的行为意图。技术接受模型(TAM)隐含在隐性系统质量(PSQ)和社会影响(SI)中,以削弱概念框架。数据是通过在线问卷从477对应者收集的。结构化模型(SEM)和人工神经网络(ANN)用于分析所调查的数据。结果显示,拟议框架的所有变量都严重影响了使用该系统的行为意图。PSQ似乎是通过回归和敏感度分析,在用户行为分析中,以多角度分析方式收集数据。多角度分析,将技术用于用户分析。