Ashwin Ramesh Babu, Mohammad Zaki Zadeh, Ashish Jaiswal, Alexis Lueckenhoff, Maria Kyrarini, F. Makedon
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引用次数: 12
摘要
近年来,随着移动技术的进步,基于电脑和游戏的认知测试变得流行起来。然而,这些测试只需要很少的身体运动,也没有考虑到身体运动对认知发展的影响。我们的工作主要集中在通过儿童的身体运动来评估他们的认知能力。因此,一个评估测试“ball drop -to-the- beat”对身体和认知都有要求,孩子们被要求根据命令执行某些动作。这项任务是专门设计用来衡量儿童的注意力、反应抑制和协调能力的。已经创建了一个数据集,其中有25个孩子执行此测试。为了实现自动评分,开发了基于计算机视觉的评分系统。视觉系统采用基于注意力的融合机制,结合多种模式,如光流、人体姿势和场景中的物体,来预测儿童的动作。所提出的方法优于其他最先进的方法,在预测动作方面达到89.8%的平均准确率,在预测球落到节拍数据集的节奏方面达到88.5%的平均准确率。
A Multi-modal System to Assess Cognition in Children from their Physical Movements
In recent years, computer and game-based cognitive tests have become popular with the advancement in mobile technology. However, these tests require very little body movements and do not consider the influence that physical motion has on cognitive development. Our work mainly focus on assessing cognition in children through their physical movements. Hence, an assessment test "Ball-Drop-to-the-Beat" that is both physically and cognitively demanding has been used where the child is expected to perform certain actions based on the commands. The task is specifically designed to measure attention, response inhibition, and coordination in children. A dataset has been created with 25 children performing this test. To automate the scoring, a computer vision-based assessment system has been developed. The vision system employs an attention-based fusion mechanism to combine multiple modalities such as optical flow, human poses, and objects in the scene to predict a child's action. The proposed method outperforms other state-of-the-art approaches by achieving an average accuracy of 89.8 percent on predicting the actions and an average accuracy of 88.5 percent on predicting the rhythm on the Ball-Drop-to-the-Beat dataset.