A New Method for Head Direction Estimation based on Dlib Face Detection Method and Implementation of Sine Invers Function

A. Al-Nuaimi, Ghassan Mohmmed
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引用次数: 1

Abstract

The detection and tracking of head movements have been such an active area of research during the past years. This area contributes highly to computer vision and has many applications of computer vision. Thus, several methods and algorithms of face detection have been proposed because they are required in most modern applications, in which they act as the cornerstone in many interactive projects. Implementation of the detected angles of the head direction is very useful in many fields, such as disabled people assistance, criminal behavior tracking, and other medical applications. In this paper, a new method is proposed to estimate the angles of head direction based on Dlib face detection algorithm that predicts 68 landmarks in the human face. The calculations are mainly based on the predicated landmarks to estimate three types of angles Yaw, Pitch and Roll. A python program has been designed to perform face detection and its direction. To ensure accurate estimation, the particular landmarks were selected, such that, they are not affected by the movement of the head, so, the calculated angles are approximately accurate. The experimental results showed high accuracy measures for the entire three angles according to real and predicted measures. The sample standard deviation results for each real and calculated angle were Yaw (0.0046), Pitch (0.0077), and Roll (0.0021), which confirm the accuracy of the proposed method compared with other studies. Moreover, the method performs faster which promotes accurate online tracking.
一种基于Dlib人脸检测的头部方向估计新方法及正弦逆变函数的实现
在过去的几年里,头部运动的检测和跟踪一直是一个非常活跃的研究领域。这一领域对计算机视觉有很大的贡献,并有许多计算机视觉的应用。因此,已经提出了几种人脸检测的方法和算法,因为它们在大多数现代应用中都是必需的,在这些应用中,它们是许多交互项目的基石。实现头部方向的检测角度在许多领域都非常有用,如残疾人救助、犯罪行为跟踪和其他医疗应用。本文提出了一种基于Dlib人脸检测算法的头部方向角估计新方法,该算法预测了人脸上的68个标志。计算主要基于预测的界标来估计偏航、俯仰和滚转三种类型的角度。已经设计了一个python程序来执行人脸检测及其方向。为了确保准确的估计,选择了特定的界标,这样它们就不会受到头部运动的影响,因此计算出的角度大致准确。实验结果表明,根据实际测量和预测测量,对整个三个角度进行了高精度测量。每个实际角度和计算角度的样本标准偏差结果为偏航(0.0046)、俯仰(0.0077)和滚转(0.0021),这证实了与其他研究相比,所提出方法的准确性。此外,该方法执行得更快,从而促进了准确的在线跟踪。
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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24 weeks
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