儿童认知能力评估的低资源机器学习模型开发

Adithya Kahawanugoda, Kulanika Gnanarathna, Nilan Meegoda, Randika Monarawila, Pradeepa Samarasinghe, A. Lindamulage
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引用次数: 1

摘要

自动化认知评估工具在评估认知发展方面是最先进的。由于资源的低可用性,构建自动化的认知能力评估工具是具有挑战性的。本研究的重点是使用有限数量的数据开发机器学习模型,以评估7至9岁讲僧伽罗语的儿童的推理智商、知识智商、心理计时和注意力水平。我们的解决方案包括僧伽罗语语音识别系统、图像分类模型、凝视估计、眨眼计数检测和面部表情识别模型,以评估上述四个认知能力测量因素。开放域语音识别被用于评估复杂的僧伽罗儿童语言反应,使用端到端语音识别系统评估有限词汇反应,分别达到40.1%和97.14%的准确率。此外,手写体僧伽罗字母识别图像分类模型和两种形状识别模型的准确率分别达到97%、89%和99%。基于注视估计、面部表情识别和眨眼频率检测模型的注意力水平评估线性回归模型获得了85%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Low Resource Machine Learning Models for Child Cognitive Ability Assessments
Automated cognitive assessment tools are state-of-the-art in assessing cognition development. Due to the low availability of resources, building automated cognitive ability evaluation tools is challenging. This study focuses on developing machine learning models using a limited amount of data to assess Reasoning IQ, Knowledge IQ, Mental Chronometry and Attention-levels of Sinhala-speaking children between the age of 7 to 9 years. Our solution includes Sinhala speech recognition systems, image classification models, gaze estimation, blink count detection and facial expression recognition models to evaluate the above four cognitive ability measuring factors. Open domain speech recognition has been used to evaluate complex Sinhala child verbal responses and limited vocabulary responses were assessed using an end-to-end speech recognition system, respectively achieving 40.1% WER and 97.14% accuracy. Additionally, the image classification models for handwritten Sinhala letter recognition and two shape recognition models have gained 97%, 89% and 99% accuracy. The linear regression model for attention level evaluation that utilizes the inputs from a combination of eye-gaze estimation, facial expression recognition and blink rate detection models has gained 85% accuracy.
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