基于改进长短期记忆方法的卷积神经网络人脸识别框架

Sushmitha Parikibanda
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引用次数: 1

摘要

对于现实世界的应用,如视频监控、人机交互和安全系统,人脸识别是非常关键的。与传统方法相比,深度学习方法在图像识别的精度和处理速度方面表现出更好的结果。与传统方法相比。虽然不同商业应用的面部检测问题已经被广泛研究了几十年,但由于各种各样的问题,如严重的面部遮挡、非常低的分辨率、强烈的光照和图像或视频压缩伪影的异常变化等,它们仍然面临许多特定场景的问题。这项工作的目的是通过一种称为长短期模型卷积神经网络(CNN-mLSTM)的面部检测方法稳健地解决上述问题。该方法首先对原始帧进行平面化处理,利用高斯滤波计算梯度图像。然后利用边缘检测算法Canny-Kirsch法对人脸边缘进行识别。实验结果表明,所提出的技术超越了目前的现代人脸检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Recognition Framework based on Convolution Neural Network with modified Long Short Term memory Method
For real-world applications, such as video monitoring, interaction between human machines and safety systems, face recognition is very critical. Deep learning approaches have demonstrated better results in terms of precision and processing speed in image recognition compared to conventional methods. In comparison to traditional methods. While facial detection problems with different commercial applications have been extensively studied for several decades, they still face problems with many specific scenarios, due to various problems such as severe facial occlusions, very low resolutions, intense lighting and exceptional changes in image or video compression artifacts, etc. The aim of this work is to robustly solve the issues listed above with a facial detection approach called Convolution Neural Network with Long short-term Model (CNN-mLSTM). This method first flattened the original frame, calculating the gradient image with Gaussian filter. The edge detection algorithm Canny-Kirsch Method will then be used to identify edge of the human face. The experimental findings suggest that the technique proposed exceeds the current modern methods of face detection.
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