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Sign language recognition using PCA, wavelet and neural network

机译:使用PCA,小波和神经网络进行手语识别

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Deaf people all around the world use sign language to communicate and like oral languages vary from country to another so it is for the sign languages. In this paper, we propose a probabilistic neural network (PNN) for two Sign languages: American Sign Language (ASL) recognition for static signs and Arabic sign Language. The signs in both of them are realized with one naked hand and simple background. DCT, DWT and PCA for spatial reduction method. Although PCA has been used before in sign language as a dimensionality reduction technique, it is used here as a descriptor that represents a global image feature. Finally we combine the features to improve the recognition rate (RR) and an error rate(ER) where DWT combined with the PCA using PNN classifier achieves RR 80.2% and ER 3.90% for Arabic database. The RR is improved to be 94% for American database with an ER 1.2%.
机译:世界各地的聋人都使用手语进行交流,就像口头语言因国家而异一样,手语也是如此。在本文中,我们提出了一种针对两种手语的概率神经网络(PNN):用于静态手语的美国手语(ASL)识别和阿拉伯手语。它们两个中的标志都是用一只裸手和简单背景实现的。 DCT,DWT和PCA用于空间缩小方法。尽管PCA以前曾在手语中用作降维技术,但在这里它用作表示全局图像特征的描述符。最后,我们结合了这些功能以提高识别率(RR)和错误率(ER),其中DWT与PCA结合使用PNN分类器可以实现阿拉伯数据库的RR 80.2%和ER 3.90%。美国数据库的RR改进为94%,ER为1.2%。

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