Real-time integrated face detection and recognition on embedded GPGPUs

Saehanseul Yi, Illo Yoon, Chanyoung Oh, Youngmin Yi
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引用次数: 22

Abstract

Both face detection and face recognition have started to be used widely these days in various applications such as biometric, surveillance, security, advertisement, entertainment, and so on. The ever increasing input image size in face detection and the large input DB in face recognition keep requiring more computational power to achieve real-time processing. Recently, embedded GPUs have started to support OpenCL and many applications can be accelerated successfully as the server GPUs have. In this paper, we propose several optimization techniques for the Local Binary Pattern (LBP) based integrated face detection and recognition algorithms, and successfully accelerated them achieving 22 fps using OpenCL on ARM Mali GPU, and 38 fps using CUDA on Tegra K1 GPU for HD inputs. This corresponds to 2.9 times and 3.7 times speedups respectively. To the best of our knowledge, it is the first paper that presents the acceleration of the face detection on embedded GPGPUs, and also that presents the performance of Tegra K1 GPU.
基于嵌入式gpgpu的实时集成人脸检测与识别
如今,人脸检测和人脸识别已经开始广泛应用于生物识别、监控、安全、广告、娱乐等各个领域。随着人脸检测输入图像尺寸的不断增大和人脸识别输入DB的不断增大,需要更多的计算能力来实现实时处理。最近,嵌入式gpu已经开始支持OpenCL,许多应用程序可以像服务器gpu一样成功地加速。在本文中,我们提出了几种基于局部二进制模式(Local Binary Pattern, LBP)的集成人脸检测和识别算法的优化技术,并成功地在ARM Mali GPU上使用OpenCL实现了22 fps,在Tegra K1 GPU上使用CUDA实现了38 fps的高清输入。这分别相当于2.9倍和3.7倍的速度。据我们所知,这是第一篇介绍嵌入式gpgpu上人脸检测加速的论文,也是第一篇介绍Tegra K1 GPU性能的论文。
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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