利用Keras模型通过检测面部特征进行准确快速的性别识别

A. Vani, R. N. Raajan, D. Haretha Winmalar., R. Sudharsan
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引用次数: 9

摘要

随着对以人为本的、有效的和合乎伦理的结构的需求的出现,性别的自动识别在人机交互的时代越来越受到关注。大多数性别检测系统都是使用文字或视听来源进行分析的。太多的人提出了使用从人的身体和/或行为中获得的特征来自动识别性别的不同方法。但准确性一直是自动性别检测的一个问题或缺陷。首先,采用基于Viola-Jones人脸检测算法的Haar Cascade对人脸及其眼、口、鼻特征进行检测;在性别检测之前,通过应用自适应滤波器来降低噪声,从而提高准确性。得到的面部特征作为神经网络的输入或测试数据。神经网络被设计用来获取特征,并作为分类器来检测性别。简单地说,特征提取和性别检测是使用名为keras的开源神经网络执行的。
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Using the Keras Model for Accurate and Rapid Gender Identification through Detection of Facial Features
As the need for person-aligned, effective, and ethical structures emerges, automatic identification of gender is gaining interest in the era of machine-man interactions. Most of the systems for gender detection were analysed using textual or audiovisual sources. Far too many suggested different approaches for automatic identification of gender using the characteristics acquired from people’s bodies and/or behaviours. But the accuracy has always been a question or a drawback in automated gender detection. In the proposed research work, First, the faces and the facial features which includes eyes, mouth, and nose are detected using Haar Cascade based on Viola-Jones face detection algorithm. Before, the gender detection, the noise is reduced by applying adaptive filters, thereby increasing the accuracy. The obtained facial features are given as the input or test data to the neural network. The neural network is designed to obtain the features and acts as a classifier to detect the genders. Simply, the feature extraction and gender detection is performed using the open source neural network called keras.
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