Novel Indian Sign Language Recognition technique using Energy Compaction of five orthogonal transforms

Sudeep D. Thepade, Ashwini Kawale, Poonam Shipure, S. Thomas, Shruti Nathe
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引用次数: 2

Abstract

Sign language is the most basic communication medium for deaf and dumb people. It has evolved as the major area of research and study. In this paper the novel techniques for Indian Sign Language Recognition are proposed and analyzed with experimentation. Indian Sign Language has total 26 alphabets. With the help of Energy Compaction using five different orthogonal transforms, maximum energy is packed into low frequency region of the row mean of column transformed sign images. The feature vectors are extracted in five different ways from the transformed sign images in the form of feature sets of 3.125%, 6.25%, 12.5%, 25%, 50% of the total 100% coefficients of row mean of column transformed Sign images. The experimentation is done on a database containing 260 images spread across 26 categories. For each query fired on the database the average precision values are calculated. The results have improved with fractional coefficients compared to complete transformed sign image resulting in faster recognition. Overall Haar and Cosine transforms have given good results as indicated by higher precision values.
基于五种正交变换能量压缩的印度手语识别新技术
手语是聋哑人最基本的交流媒介。它已经发展成为研究和学习的主要领域。本文提出了一些新的印度手语识别技术,并进行了实验分析。印度手语共有26个字母。利用五种不同正交变换的能量压缩,将最大能量压缩到列变换符号图像行均值的低频区域。从变换后的符号图像中,以列变换后的符号图像行均值总100%系数的3.125%、6.25%、12.5%、25%、50%的特征集的形式,通过五种不同的方式提取特征向量。实验是在一个包含26个类别的260张图片的数据库上进行的。对于在数据库上触发的每个查询,计算平均精度值。与完全变换后的符号图像相比,分数系数的结果得到了改善,识别速度更快。总的来说,哈尔变换和余弦变换得到了较好的结果,表明精度较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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