GPSO versus GA in facial emotion detection

B. M. Ghandi, R. Nagarajan, S. Yaacob, D. Hazry
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引用次数: 1

Abstract

We recently proposed the guided particle swarm optimisation GPSO algorithm as a modification to the popular particle swarm optimisation PSO algorithm with the objective of solving the facial emotion recognition problem. A real-time facial emotion recognition software was implemented using GPSO and tested with 25 subjects. The result was found to be good both in terms of recognition success rate and recognition speed. As a follow-up, we decided to investigate how our novel GPSO approach compares with existing popular classification methods, such as genetic algorithm GA. We re-implement our emotion recognition software using GA and tested it using the video recordings of the same 25 subjects that were used to test the GPSO-based system. Our results show that while the recognition success rate achieved using GA is still reasonable, the recognition speed is very slow, suggesting that the GA method may not be suitable for real-time emotion recognition applications.
GPSO与遗传算法在面部情绪检测中的比较
为了解决人脸情绪识别问题,我们提出了一种基于粒子群算法的导引粒子群优化算法。采用GPSO实现了实时面部情绪识别软件,并对25名受试者进行了测试。结果表明,该方法在识别成功率和识别速度方面都取得了良好的效果。接下来,我们决定研究我们的新GPSO方法与现有流行的分类方法(如遗传算法GA)的比较。我们使用遗传算法重新实现我们的情绪识别软件,并使用用于测试基于gpso的系统的相同25个受试者的视频记录对其进行测试。我们的研究结果表明,虽然使用遗传算法获得的识别成功率仍然合理,但识别速度非常慢,表明遗传算法可能不适合实时情感识别应用。
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