The landmark variation improvement on the different modalities for the facial sketch features detection

A. Muntasa, M. K. Sophan, M. Hery, K. Kunio
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引用次数: 1

Abstract

Facial feature detection studies on the same modality have been conducted by many researchers, but the research results cannot be implemented on the different modality, only a few studies that can be used to detect the facial features on the different modality. In this research, we proposed method to detect the facial features on the different modality. The deviation standard on the landmark variations improvement has been considered as parameters to improve the moving direction toward the corresponding features. The experimental results show that the detection accuracy of our proposed method is 91.944% for the 1st model and 91.46% for the 2nd model. Our proposed method has been shown outperformed the mixture model method.
人脸素描特征检测中不同模态的地标性变异改进
许多研究者对同一模态的人脸特征检测进行了研究,但研究结果不能在不同的模态上实施,只有少数研究可以用来检测不同模态上的人脸特征。在本研究中,我们提出了一种基于不同模态的人脸特征检测方法。将地物变异改进上的偏差标准作为参数,改进向相应地物的移动方向。实验结果表明,该方法对第一种模型的检测准确率为91.944%,对第二种模型的检测准确率为91.46%。结果表明,该方法优于混合模型方法。
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