Cognitive Model for Human Behavior Analysis

Xiujun Zhai, A. Rajaram, K. Ramesh
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引用次数: 1

Abstract

The number of autistic children and young people is rising rapidly across the world. Children with intellectual disabilities need special attention from trained experts. Educating them on improving their lifestyle is critical through the traditional teaching-learning environment. This study introduces an interactive educational framework that helps children with special needs have an improved and exciting learning process and explores the need to incorporate physical exercise into their everyday lives. Virtual Reality (VR) seeks more attention from autistic students. This research presents a Machine Learning-based Virtual Reality Application (ML-VRA) for Mentally Challenged Children and keeps the Human Behavior Analysis log files. Machine learning can predict the score of brain data ability. The visual short-term memory and visual-spatial memory are further assessed to identify students’ interaction with the VR application. Support Vector Regression prediction algorithm and Baseline Prediction algorithm are used to assess the score prediction for visual short memory and visual-spatial memory.Using an audio technology that allows autistic persons to hear various sounds, the cognitive method VRA instructs autistic children.Further, this study proposes a cognitive model for intellectual task processes and problem-solving using metacognitive architecture. Thus, children can acquire different levels of learning knowledge and skills. The case study performed on these model results with the highest prediction accuracy of 93.65%.
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人类行为分析的认知模型
全世界自闭症儿童和青少年的数量正在迅速上升。智力残疾儿童需要受过训练的专家给予特别关注。通过传统的教学环境,教育他们改善生活方式是至关重要的。本研究引入互动教育框架,帮助有特殊需要的儿童有一个改善和令人兴奋的学习过程,并探讨将体育锻炼融入他们的日常生活的必要性。虚拟现实(VR)寻求自闭症学生更多的关注。本研究提出了一种基于机器学习的智障儿童虚拟现实应用(ML-VRA),并保存了人类行为分析日志文件。机器学习可以预测大脑数据能力的得分。进一步评估视觉短期记忆和视觉空间记忆,以识别学生与虚拟现实应用程序的互动。采用支持向量回归预测算法和基线预测算法对视觉短时记忆和视觉空间记忆进行评分预测。使用一种让自闭症患者听到各种声音的音频技术,认知方法VRA指导自闭症儿童。此外,本研究提出了一种基于元认知架构的智力任务过程和问题解决的认知模型。因此,孩子们可以获得不同层次的学习知识和技能。对这些模型结果进行了实例分析,预测精度最高,达到93.65%。
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