比较CNN和RNN在基于面部手势的视频采访判断预测中的应用

Nishank Singhal, Neetika Singhal, Srishti
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引用次数: 3

摘要

本文提出了一种在视频面试中判断应聘者表现的新方法。根据脸和眼睛的方向来判断应聘者是自信专心还是不自信不专心。这与应试者通过与面试官进行坚定的眼神交流而积极互动的次数相对应。图像处理技术,如哈尔级联,图像滤波,伽玛校正已用于人脸和眼睛的检测。卷积神经网络(CNN)和循环神经网络(RNN)被用于训练和测试图像到正确的类别。
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Comparing CNN and RNN for Prediction of Judgement in Video Interview Based on Facial Gestures
This paper presents a novel technique of judging the performance of a candidate in a video interview. The candidate is judged as confident and attentive or unconfident and inattentive by taking the direction of face and eye into consideration. This corresponds to how many times is the candidate interacting actively, by making a firm eye contact with the interviewer. Image Processing techniques like Haar Cascade, Image filtering, Gamma Correction have been used for the detection of face and eye. Convolutional Neural Network (CNN) and Recurrent Neural Network (RNN) have been used for training and testing the images into right classes.
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