The Optimization of Face Detection Technology Based on Neural Network and Deep Learning

Jian Zhao
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Abstract

Face detection is a biometric technology that automatically contains facial feature information. It integrates digital image processing, pattern recognition, and other technologies and collects images or video streams containing human faces by cameras or cameras for automatic detection and tracking. Starting from the idea of local features and deep learning, aiming at the problem that traditional convolutional neural network (CNN) only extracts features from the whole image and ignores practical local details, this article proposes a deep CNN model based on the fusion of global and local features. It explores the face detection algorithm with better performance under the interference of illumination, expression, and other internal or external factors. This method designs a suitable network structure according to the size of the training data set, and the core technology is the debugging of super parameters. The simulation results show that compared with SVM, the improved CNN has obvious advantages in the later stage of operation, and the error is reduced by 36.85%. Compared with the traditional face detection method, it can automatically extract image features and also automatically learn its model and get a higher recognition rate.
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基于神经网络和深度学习的人脸检测技术优化
人脸检测是一种自动包含人脸特征信息的生物识别技术。它集成了数字图像处理、模式识别等技术,通过摄像头或摄像机采集包含人脸的图像或视频流,进行自动检测和跟踪。本文从局部特征和深度学习的思想出发,针对传统卷积神经网络(CNN)只提取整个图像的特征而忽略实际的局部细节的问题,提出了一种基于全局特征和局部特征融合的深度CNN模型。探索光照、表情等内外因素干扰下性能更好的人脸检测算法。该方法根据训练数据集的大小设计合适的网络结构,其核心技术是超参数的调试。仿真结果表明,与SVM相比,改进后的CNN在后期运行中具有明显的优势,误差降低了36.85%。与传统的人脸检测方法相比,它可以自动提取图像特征并自动学习其模型,从而获得更高的识别率。
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