Implementing and analysing FAR and FRR for face and voice recognition (multimodal) using KNN classifier

IF 0.8 Q4 ROBOTICS
D. Kumar, P. Rao
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引用次数: 5

Abstract

Purpose The purpose of this paper is to incorporate a multimodal biometric system, which plays a major role in improving the accuracy and reducing FAR and FRR performance metrics. Biometrics plays a major role in several areas including military applications because of robustness of the system. Speech and face data are considered as key elements that are commonly used for multimodal biometric applications, as they are simultaneously acquired from camera and microphone. Design/methodology/approach In this proposed work, Viola‒Jones algorithm is used for face detection, and Local Binary Pattern consists of texture operators that perform thresholding operation to extract the features of face. Mel-frequency cepstral coefficients exploit the performances of voice data, and median filter is used for removing noise. KNN classifier is used for fusion of both face and voice. The proposed method produces better results in noisy environment with better accuracy. In this proposed method, from the database, 120 face and voice samples are trained and tested with simulation results using MATLAB tool that improves performance in better recognition and accuracy. Findings The algorithms perform better for both face and voice recognition. The outcome of this work provides better accuracy up to 98 per cent with reduced FAR of 0.5 per cent and FRR of 0.75 per cent. Originality/value The algorithms perform better for both face and voice recognition. The outcome of this work provides better accuracy up to 98 per cent with reduced FAR of 0.5 per cent and FRR of 0.75 per cent.
基于KNN分类器的人脸和语音多模态识别的FAR和FRR实现与分析
本文的目的是建立一个多模态生物识别系统,该系统在提高准确性和降低FAR和FRR性能指标方面发挥重要作用。由于系统的鲁棒性,生物识别技术在包括军事应用在内的几个领域发挥着重要作用。语音和面部数据被认为是多模态生物识别应用中常用的关键元素,因为它们同时从相机和麦克风中获取。设计/方法/方法本文采用Viola-Jones算法进行人脸检测,局部二值模式由纹理算子组成,纹理算子执行阈值操作提取人脸特征。Mel-frequency倒谱系数利用语音数据的性能,中值滤波用于去噪。KNN分类器用于人脸和语音的融合。该方法在噪声环境下具有较好的检测效果,检测精度较高。在该方法中,从数据库中选取120个人脸和语音样本,利用MATLAB工具进行训练和仿真测试,提高了识别性能和准确性。这些算法在面部和语音识别方面都表现得更好。这项工作的结果提供了更高的准确率,高达98%,FAR降低了0.5%,FRR降低了0.75%。原创性/价值算法在面部和语音识别方面都表现更好。这项工作的结果提供了更高的准确度,高达98%,降低了0.5%的FAR和0.75%的FRR。
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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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
21
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