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A light and fast one class detection framework for edge devices. We provide face detector, head detector, pedestrian detector, vehicle detector......

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A Light and Fast Face Detector for Edge Devices

Recent Update

  • 2019.07.25 This repos is first online. Face detection code and trained models are released.
  • 2019.08.15 This repos is formally released. Any advice and error reports are sincerely welcome.
  • 2019.08.22 face_detection: latency evaluation on TX2 is added.
  • 2019.08.25 face_detection: RetinaFace-MobileNet-0.25 is added for comparison (both accuracy and latency).

Introduction

This repo releases the source code of paper "LFFD: A Light and Fast Face Detector for Edge Devices". Our paper presents a light and fast face detector (LFFD) for edge devices. LFFD considerably balances both accuracy and latency, resulting in small model size, fast inference speed while achieving excellent accuracy. Understanding the essence of receptive field makes detection networks interpretable.

In practical, we have deployed it in cloud and edge devices (like NVIDIA Jetson series and ARM-based embedding system). The comprehensive performance of LFFD is robust enough to support our applications.

In fact, our method is a general detection framework that applicable to one class detection, such as face detection, pedestrian detection, head detection, vehicle detection and so on. In general, an object class, whose average ratio of the longer side and the shorter side is less than 5, is appropriate to apply our framework for detection.

Several practical advantages:

  1. large scale coverage, and easy to extend to larger scales by adding more layers without much latency gain.
  2. detect small objects (as small as 10 pixels) in images with extremely large resolution (8K or even larger) in only one inference.
  3. easy backbone with very common operators makes it easy to deploy anywhere.

Accuracy and Latency

We train LFFD on train set of WIDER FACE benchmark. All methods are evaluated on val/test sets under the SIO schema (please refer to the paper for details).

  • Accuracy on val set of WIDER FACE (The values in () are results from the original papers):
Method Easy Set Medium Set Hard Set
DSFD 0.949(0.966) 0.936(0.957) 0.850(0.904)
PyramidBox 0.937(0.961) 0.927(0.950) 0.867(0.889)
S3FD 0.923(0.937) 0.907(0.924) 0.822(0.852)
SSH 0.921(0.931) 0.907(0.921) 0.702(0.845)
FaceBoxes 0.840 0.766 0.395
FaceBoxes3.2× 0.798 0.802 0.715
LFFD 0.910 0.881 0.780
  • Accuracy on test set of WIDER FACE (The values in () are results from the original papers):
Method Easy Set Medium Set Hard Set
DSFD 0.947(0.960) 0.934(0.953) 0.845(0.900)
PyramidBox 0.926(0.956) 0.920(0.946) 0.862(0.887)
S3FD 0.917(0.928) 0.904(0.913) 0.821(0.840)
SSH 0.919(0.927) 0.903(0.915) 0.705(0.844)
FaceBoxes 0.839 0.763 0.396
FaceBoxes3.2× 0.791 0.794 0.715
LFFD 0.896 0.865 0.770
  • Accuracy on FDDB:
Method Disc ROC curves score
DFSD 0.984
PyramidBox 0.982
S3FD 0.981
SSH 0.977
FaceBoxes3.2× 0.905
FaceBoxes 0.960
LFFD 0.973

In the paper, three hardware platforms are used for latency evaluation: NVIDIA GTX TITAN Xp, NVIDIA TX2 and Rasberry Pi 3 Model B+ (ARM A53).

We report the latency of inference only (for NVIDIA hardwares, data transfer is included), excluding pre-processing and post-processing. The batchsize is set to 1 for all evaluations.

  • Latency on NVIDIA GTX TITAN Xp (MXNet+CUDA 9.0+CUDNN7.1):
Resolution-> 640×480 1280×720 1920×1080 3840×2160
DSFD 78.08ms(12.81 FPS) 187.78ms(5.33 FPS) 392.82ms(2.55 FPS) 1562.50ms(0.64 FPS)
PyramidBox 50.51ms(19.08 FPS) 143.34ms(6.98 FPS) 331.93ms(3.01 FPS) 1344.07ms(0.74 FPS)
S3FD 21.75ms(45.95 FPS) 55.73ms(17.94 FPS) 119.53ms(8.37 FPS) 471.31ms(2.21 FPS)
SSH 22.44ms(44.47 FPS) 55.29ms(18.09 FPS) 118.43ms(8.44 FPS) 463.10ms(2.16 FPS)
FaceBoxes3.2× 6.80ms(147.00 FPS) 12.96ms(77.19 FPS) 25.37ms(39.41 FPS) 111.98ms(8.93 FPS)
LFFD 7.60ms(131.40 FPS) 16.37ms(61.07 FPS) 31.27ms(31.98 FPS) 87.79ms(11.39 FPS)
  • Latency on NVIDIA TX2 (MXNet+CUDA 9.0+CUDNN7.1) presented in the paper:
Resolution-> 160×120 320×240 640×480
FaceBoxes3.2× 11.20ms(89.29 FPS) 19.62ms(50.97 FPS) 72.74ms(13.75 FPS)
LFFD 7.30ms(136.99 FPS) 19.64ms(50.92 FPS) 64.70ms(15.46 FPS)
  • Latency on Respberry Pi 3 Model B+ (ncnn) presented in the paper:
Resolution-> 160×120 320×240 640×480
FaceBoxes3.2× 167.20ms(5.98 FPS) 686.19ms(1.46 FPS) 3232.26ms(0.31 FPS)
LFFD 118.45ms(8.44 FPS) 409.19ms(2.44 FPS) 4114.15ms(0.24 FPS)

On NVIDIA platform, TensorRT is the best choice for inference. So we conduct additional latency evaluations using TensorRT (the latency is dramatically decreased!!!). As for ARM based platform, we plan to use MNN and Tengine for latency evaluation. Details can be found in the sub-project face_detection.

Getting Started

We implement the proposed method using MXNet Module API.

Prerequirements (global)

  • Python>=3.5
  • numpy>=1.16 (lower versions should work as well, but not tested)
  • MXNet>=1.4.1 (install guide)
  • cv2=3.x (pip3 install opencv-python==3.4.5.20, other version should work as well, but not tested)

Tips:

  • use MXNet with cudnn.
  • build numpy from source with OpenBLAS. This will improve the training efficiency.
  • make sure cv2 links to libjpeg-turbo, not libjpeg. This will improve the jpeg decode efficiency.

Sub-directory description

  • face_detection contains the code of training, evaluation and inference for LFFD, the main content of this repo. The trained models of different versions are provided for off-the-shelf deployment.
  • head_detection contains the trained models for head detection. The models are obtained by the proposed general one class detection framework.
  • pedestrian_detection contains the trained models for pedestrian detection. The models are obtained by the proposed general one class detection framework.
  • vehicle_detection contains the trained models for vehicle detection. The models are obtained by the proposed general one class detection framework.
  • ChasingTrainFramework_GeneralOneClassDetection is a simple wrapper based on MXNet Module API for general one class detection.

Installation

  1. Download the repo:
git clone https://github.com/YonghaoHe/A-Light-and-Fast-Face-Detector-for-Edge-Devices.git
  1. Refer to the corresponding sub-project for detailed usage.

Citation

If you benefit from our work in your research and product, please kindly cite the paper

@inproceedings{LFFD,
title={LFFD: A Light and Fast Face Detector for Edge Devices},
author={He, Yonghao and Xu, Dezhong and Wu, Lifang and Jian, Meng and Xiang, Shiming and Pan, Chunhong},
booktitle={arXiv:1904.10633},
year={2019}
}

To Do List

  • face detection
  • pedestrian detection
  • head detection
  • vehicle detection
  • license plate detection
  • PyTorch version

Contact

Yonghao He

E-mails: [email protected] / [email protected]

If you are interested in this work, any innovative contributions are welcome!!!

Internship is open at NLPR, CASIA all the time. Send me your resumes!

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A light and fast one class detection framework for edge devices. We provide face detector, head detector, pedestrian detector, vehicle detector......

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