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Clinical infant pain trial based on k-NN algorithm

机译:基于K-NN算法的临床婴儿疼痛试验

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This paper presents a vision-based infant-pain monitoring system that adopts an infant behavior analysis approach to detect infant injuries. In our study, the system first pre-processes the input sequence to filter out the noise and reduce the effects of lights and shadows. Then, the infant's faces are detected from the input frames and feature extraction was done with SVD and FFT. A k-NN classifier was employed to describe pain over time. It is found that the identification rate of reaches 83.12%.
机译:本文提出了一种基于视觉的婴儿疼痛监测系统,采用婴儿行为分析方法来检测婴幼儿伤害。在我们的研究中,系统首先预处理输入序列以滤除噪声并减少灯光和阴影的效果。然后,从输入帧检测婴儿的面,用SVD和FFT完成特征提取。 k-nn分类器被用来随着时间的推移描述疼痛。发现识别率达到83.12%。

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