基于SIFT的孟加拉语手语识别方法

F. Yasir, P. Prasad, A. Alsadoon, A. Elchouemi
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引用次数: 44

摘要

本文提出了一种基于sift的几何计算方法对孟加拉语手语进行强识别。采用高斯分布和灰度技术对符号图像进行图像处理和归一化。预处理后,通过尺度不变特征变换从符号图像中提取特征。从符号图像中获取所有描述符,对先前SIFT计算的所有描述符执行k-means聚类。基于样本训练集,每个聚类表示为一个视觉词。考虑到聚类描述子的直方图特征,在此基础上引入词袋模型,生成一组视觉词汇。最后,利用各自的训练数据集对每个符号词进行二元线性支持向量机分类器的训练。考虑这些二元分类器,我们分别获得了孟加拉语表达式符号和字母的识别率。
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SIFT based approach on Bangla sign language recognition
This paper presents a SIFT-based geometrically computational approach to vigorously recognize Bangla sign language (BdSL). Gaussian distribution and grayscaling techniques are applied for image processing and normalizing the sign image. After this pre-processing, features are extracted from the sign image by implementing scale invariant feature transform. Acquiring all descriptors from the sign image, k-means clustering is executed on all the descriptors which are previously computed by SIFT. Based on the sample training set, each of the cluster denotes as a visual word. Considering the histograms of the clustering descriptors, Bag of words model is introduced on this hybrid approach which develops a set of visual vocabulary. Finally for each of sign word, a binary linear support vector machine (SVM) classifier is trained with a respective training data set. Considering these binary classifiers, we obtained a respective recognition rate on both Bangla signs of expressions and alphabets.
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