Face Detection and Recognition Methods using Deep Learning in Autonomous Driving

Sebastian-Aurelian Ștefănigă, Mihail Gaianu
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引用次数: 3

Abstract

One of the objectives of deep learning is to solve high complex tasks such as perception. In recent years, it has been demonstrated that deep learning can overcome traditional algorithms in image classification as well as object recognition and face recognition tasks. In this paper we are inspecting techniques of deep learning that deals with topical issues in the field of Computer Vision: real-time face detection and face recognition using embedded system and GPU processing on NVidia Tegra X2 (Jetson TX2). In the first part of our work we are proposing a novel experimental research to the problem of face detection and recognition in autonomous driving that use a new deep convolutional neural network model, named FADNet. The architecture model was used on a existing dataset containing more then 13.000 images of 2.000 different faces from different cultures, on which we gained an accuracy of 81.78%, along with an accuracy of 84.45% on a detection dataset containing new 8.600 images. In the final phase of the experimental research we did a real-time test on a dataset of self-acquired video frames from Jetson TX2 embedded system camera, achieving an accuracy of 67.45%, which is a promising result for real-time processing. Last but not least, accuracy and inference time are taken into account by comparing time performance between CPU and GPU implementations.
基于深度学习的自动驾驶人脸检测与识别方法
深度学习的目标之一是解决高度复杂的任务,如感知。近年来,深度学习在图像分类以及物体识别和人脸识别任务中已经证明可以克服传统算法。在本文中,我们正在研究处理计算机视觉领域热门问题的深度学习技术:使用嵌入式系统和NVidia Tegra X2 (Jetson TX2)上的GPU处理的实时人脸检测和人脸识别。在我们工作的第一部分中,我们提出了一种新的实验研究,用于自动驾驶中的人脸检测和识别问题,该问题使用了一种新的深度卷积神经网络模型,名为FADNet。该架构模型用于包含来自不同文化的2000张不同面孔的13000多张图像的现有数据集,我们获得了81.78%的准确率,以及包含新8600张图像的检测数据集的84.45%的准确率。在实验研究的最后阶段,我们对Jetson TX2嵌入式系统摄像机的自采集视频帧数据集进行了实时测试,准确率达到67.45%,这是一个很有希望的实时处理结果。最后但并非最不重要的是,通过比较CPU和GPU实现之间的时间性能来考虑准确性和推理时间。
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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