Development of an American Sign Language Recognition System using Canny Edge and Histogram of Oriented Gradient

Q4 Engineering
I. Adeyanju, O. O. Bello, M. A. Azeez
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引用次数: 3

Abstract

Sign language is used by people who have hearing and speaking difficulties, but not understood by many without these difficulties. Therefore, sign language recognition systems are developed to aid communication between hearing impaired people and others. This paper developed a static American Sign Language Recognition (ASLR) system using canny-edge and histogram of oriented gradient (HOG) for feature extraction with K-Nearest Neighbour (K-NN) as classifier. The sign language image datasets used consist of English alphabets from both Massey University and Kaggle, and numbers (0-9) from Massey University. Median filter was used to remove noise after images were converted to grayscale. Otsu algorithm was used for segmentation while edges in the images were preserved using canny edge detection technique with HOG parameters tuning to obtain feature vectors. The extracted features were used by K-NN for classification. An average recognition accuracy and computational testing time of 97.6% and 0.39s respectively were obtained based on experiments with the Massey University dataset. Similarly, an average recognition accuracy and computational testing time of 99.0% and 0.43s respectively were obtained based on experiments with the Kaggle dataset. The developed system successfully recognized static English alphabets and numbers and outperformed some existing systems.
基于Canny边缘和梯度直方图的美国手语识别系统的开发
手语是由听力和口语有困难的人使用的,但许多没有这些困难的人无法理解。因此,开发手语识别系统是为了帮助听力受损者与他人之间的交流。本文开发了一个静态的美国手语识别系统(ASLR),该系统使用canny边缘和定向梯度直方图(HOG)进行特征提取,并以K-近邻(K-NN)为分类器。所使用的手语图像数据集由梅西大学和Kaggle的英文字母和梅西大学的数字(0-9)组成。在图像转换为灰度后,使用中值滤波器来去除噪声。使用Otsu算法进行分割,同时使用canny边缘检测技术保留图像中的边缘,并调整HOG参数以获得特征向量。提取的特征由K-NN用于分类。基于梅西大学数据集的实验,平均识别准确率和计算测试时间分别为97.6%和0.39%。同样,基于Kaggle数据集的实验,平均识别准确率和计算测试时间分别为99.0%和0.43s。开发的系统成功地识别了静态英语字母和数字,并优于一些现有系统。
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来源期刊
Nigerian Journal of Technological Development
Nigerian Journal of Technological Development Engineering-Engineering (miscellaneous)
CiteScore
1.00
自引率
0.00%
发文量
40
审稿时长
24 weeks
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