Age Group Classifier of Adults and Children with YOLO-based Deep Learning Pre-Processing Scheme for Embedded Platforms

Jie-Min Lin, Wei-Liang Lin, Chih-Peng Fan
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引用次数: 2

Abstract

Based on the information of body proportion, in this study, a simple and effective processing scheme is developed for two age groups classification, i.e. children and adults for the applications of smart autonomous movers. By the YOLO-based CNN model for head and body objects detections, the recognition accuracies of age group classification for children and adults are 95% and 92.5% respectively with the image datasets collected in publics. Compared with the existed design, the proposed methodology performs simpler and more effective recognition capability for age group classification of adults and children. The proposed design is implemented on GPU-based embedded platform for real-time applications.
基于yolo的嵌入式平台深度学习预处理方案的成人和儿童年龄组分类器
本研究基于身体比例信息,针对智能自主机器人的应用,开发了一种简单有效的儿童和成人两个年龄组分类处理方案。使用基于yolo的CNN头部和身体物体检测模型,使用公开采集的图像数据集对儿童和成人进行年龄组分类的识别准确率分别为95%和92.5%。与现有设计相比,该方法对成人和儿童的年龄组分类具有更简单有效的识别能力。该设计在基于gpu的嵌入式平台上实现,用于实时应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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