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Real-Time Multi-Scale Face Detector on Embedded Devices

机译:嵌入式设备上的实时多尺度人脸检测器

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摘要

Face detection is the basic step in video face analysis and has been studied for many years. However, achieving real-time performance on computation-resource-limited embedded devices still remains an open challenge. To address this problem, in this paper we propose a face detector, EagleEye, which shows a good trade-off between high accuracy and fast speed on the popular embedded device with low computation power (e.g., the Raspberry Pi 3b+). The EagleEye is designed to have low floating-point operations per second (FLOPS) as well as enough capacity, and its accuracy is further improved without adding too much FLOPS. Specifically, we design five strategies for building efficient face detectors with a good balance of accuracy and running speed. The first two strategies help to build a detector with low computation complexity and enough capacity. We use convolution factorization to change traditional convolutions into more sparse depth-wise convolutions to save computation costs and we use successive downsampling convolutions at the beginning of the face detection network. The latter three strategies significantly improve the accuracy of the light-weight detector without adding too much computation costs. We design an efficient context module to utilize context information to benefit the face detection. We also adopt information preserving activation function to increase the network capacity. Finally, we use focal loss to further improve the accuracy by handling the class imbalance problem better. Experiments show that the EagleEye outperforms the other face detectors with the same order of computation costs, on both runtime efficiency and accuracy.
机译:人脸检测是视频人脸分析的基本步骤,并且已经研究了很多年。但是,在计算资源有限的嵌入式设备上实现实时性能仍然是一个挑战。为了解决这个问题,本文提出了一种人脸检测器EagleEye,它在具有低计算能力的流行嵌入式设备(例如Raspberry Pi 3b +)上显示了高精度和快速之间的良好折衷。 EagleEye被设计为具有每秒低浮点运算(FLOPS)以及足够的容量,并且在不增加太多FLOPS的情况下进一步提高了其准确性。具体来说,我们设计了五种策略来构建高效的人脸检测器,并在准确性和运行速度之间取得良好的平衡。前两种策略有助于构建具有低计算复杂度和足够容量的检测器。我们使用卷积分解将传统的卷积更改为更稀疏的深度卷积,以节省计算成本,并且在人脸检测网络开始时使用连续的下采样卷积。后三种策略可显着提高轻型检测器的精度,而不会增加过多的计算成本。我们设计了一个有效的上下文模块,以利用上下文信息来帮助面部检测。我们还采用了信息保留激活功能来增加网络容量。最后,我们通过更好地处理类不平衡问题,使用焦点损失来进一步提高准确性。实验表明,EagleEye在运行效率和准确性上都以相同的计算成本优于其他人脸检测器。

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