结合几何特征和外观技术的基于yolo的深度学习注视估计技术用于智能广告显示

Chin-Chieh Chang, Wei-Liang Ou, Hua-Luen Chen, Chih-Peng Fan
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引用次数: 1

摘要

本研究针对非接触式智能广告显示器的应用,开发了一种基于yolo的深度学习注视估计技术。通过整合外观和几何特征技术,基于YOLOv3-tiny的模型推断出的面部特征输出坐标可以在不经过校准的情况下为注视估计提供训练数据。在实验中,基于YOLOv3-tiny的模型输入尺寸按608 × 608像素排列,所使用的模型在检测面部方向和两种面部特征方面具有良好的定位性能。通过基于YOLOv3-tiny模型的交叉人检验,该方法在不进行标定的情况下,对9、6、4块模式的平均注视估计精度分别为66.38%、80.87%、88.34%。
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YOLO-Based Deep-Learning Gaze Estimation Technology by Combining Geometric Feature and Appearance Based Technologies for Smart Advertising Displays
In this study, a YOLO-based deep-learning gaze estimation technology is developed for the application of non-contact smart advertising displays. By integrating the appearance and geometric-features technologies, the output coordinates of facial features inferred by YOLOv3-tiny based models can provide the training data for gaze estimation without the calibration process. In experiments, the input size of YOLOv3-tiny based models is arranged by 608x608 pixels, and the used models have good location performance to detect the facial directions and two facial features. By the YOLOv3-tiny based model with the cross-person test, the proposed method performs the averaged gaze estimation accuracies of nine, six, and four-block modes are 66.38%, 80.87%, 88.34%, respectively with no calibration process.
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