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Eye-Gaze Tracking System Based on Particle Swarm Optimization and BP Neural Network

机译:基于粒子群优化和BP神经网络的眼光跟踪系统

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In order to enhance the practicability and accuracy of the eye-gaze tracking system, a new type low pixel eye feature point location method is adopted. This method can accurately extract the eye-gaze features, namely iris centre point and canthus points when the image pickup requirements are low. The eye-gaze tracking method based on particle swarm optimization (PSO) BP neural network is raised, to capture pictures of eyes under the same environment, and a regression model where the connection weights and threshold values are optimized by PSO algorithm is built via BP network. This method is free of the inherent defects of BP network. This method requires only a common camera and normal illumination intensity rather than high-standard hardware, which greatly cuts the restrictive requirements for the system hardware and thus enhances the system practicability. The experiment results show that PSO-BP model is of higher robustness and accuracy than BP model, and is of higher recognition rate and can effectively enhances the eye-gaze tracking accuracy.
机译:为了提高眼睛凝视跟踪系统的实用性和准确性,采用了一种新型的低像素眼睛特征点定位方法。当图像拾取要求低时,该方法可以精确提取眼睛凝视特征,即虹膜中心点和康菲点。提高了基于粒子群优化(PSO)BP神经网络的眼睛注视跟踪方法,以捕获相同环境下的眼睛的图像,并通过BP算法优化连接权重和阈值的回归模型网络。此方法没有BP网络的固有缺陷。该方法只需要普通的相机和正常的照明强度而不是高标准的硬件,这极大地减少了系统硬件的限制性要求,从而提高了系统实用性。实验结果表明,PSO-BP模型具有比BP模型更高的鲁棒性和精度,并且具有更高的识别率,并且可以有效提高眼睛凝视跟踪精度。

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