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Hybrid Particle and Kalman Filtering for Pupil Tracking in Active IR Illumination Gaze Tracking System

机译:活性IR照明凝视跟踪系统中的瞳孔跟踪的混合粒子和Kalman滤波

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摘要

A novel pupil tracking method is proposed by combining particle filtering and Kalman filtering for the fast and accurate detection of pupil target in an active infrared source gaze tracking system. Firstly, we utilize particle filtering to track pupil in synthesis triple-channel color map (STCCM) for the fast detection and develop a comprehensive pupil motion model to conduct and analyze the randomness of pupil motion. Moreover, we built a pupil observational model based on the similarity measurement with generated histogram to improve the credibility of particle weights. Particle filtering can detect pupil region in adjacent frames rapidly. Secondly, we adopted Kalman filtering to estimate the pupil parameters more precisely. The state transitional equation of the Kalman filtering is determined by the particle filtering estimation, and the observation of the Kalman filtering is dependent on the detected pupil parameters in the corresponding region of difference images estimated by particle filtering. Tracking results of Kalman filtering are the final pupil target parameters. Experimental results demonstrated the effectiveness and feasibility of this method.
机译:通过组合粒子滤波和卡尔曼滤波来提出一种新型瞳孔跟踪方法,以便在有源红外源凝视跟踪系统中的快速准确地检测光瞳靶。首先,我们利用粒子过滤在合成三沟道彩色地图(STCCM)中追踪瞳孔,以便快速检测和开发综合瞳孔运动模型,以进行和分析瞳孔运动的随机性。此外,我们基于产生直方图的相似性测量构建了一种瞳孔观测模型,以提高粒子重量的可信度。颗粒滤波可以快速地检测相邻框架中的瞳孔区域。其次,我们采用卡尔曼滤波更精确地估计了瞳孔参数。卡尔曼滤波的状态过渡方程由粒子滤波估计决定,并且卡尔曼滤波的观察取决于通过粒子滤波估计的相应差异图像的检测到的瞳孔参数。卡尔曼滤波的跟踪结果是最终的瞳孔目标参数。实验结果表明了这种方法的有效性和可行性。

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