这是一个facenet-pytorch的库,可以用于训练自己的人脸识别模型。

Overview

Facenet:人脸识别模型在Pytorch当中的实现


目录

  1. 性能情况 Performance
  2. 所需环境 Environment
  3. 注意事项 Attention
  4. 文件下载 Download
  5. 预测步骤 How2predict
  6. 训练步骤 How2train
  7. 参考资料 Reference

性能情况

训练数据集 权值文件名称 测试数据集 输入图片大小 accuracy
CASIA-WebFace facenet_mobilenet.pth LFW 160x160 98.23%
CASIA-WebFace facenet_inception_resnetv1.pth LFW 160x160 98.78%

所需环境

pytorch==1.2.0

文件下载

已经训练好的facenet_mobilenet.pth和facenet_inception_resnetv1.pth可以在百度网盘下载。
链接: https://pan.baidu.com/s/1slUYdpskFpUX62WpJeLByA 提取码: fe1w

训练用的CASIA-WebFaces数据集以及评估用的LFW数据集可以在百度网盘下载。
链接: https://pan.baidu.com/s/1fhiHlylAFVoR43yfDbi4Ag 提取码: gkch

预测步骤

a、使用预训练权重

  1. 下载完库后解压,在model_data文件夹里已经有了facenet_mobilenet.pth,可直接运行predict.py输入:
img\1_001.jpg
img\1_002.jpg
  1. 也可以在百度网盘下载facenet_inception_resnetv1.pth,放入model_data,修改facenet.py文件的model_path后,输入:
img\1_001.jpg
img\1_002.jpg

b、使用自己训练的权重

  1. 按照训练步骤训练。
  2. 在facenet.py文件里面,在如下部分修改model_path和backbone使其对应训练好的文件;model_path对应logs文件夹下面的权值文件,backbone对应主干特征提取网络
_defaults = {
    "model_path"    : "model_data/facenet_mobilenet.pth",
    "input_shape"   : (160, 160, 3),
    "backbone"      : "mobilenet",
    "cuda"          : True,
}
  1. 运行predict.py,输入
img\1_001.jpg
img\1_002.jpg

训练步骤

  1. 本文使用如下格式进行训练。
|-datasets
    |-people0
        |-123.jpg
        |-234.jpg
    |-people1
        |-345.jpg
        |-456.jpg
    |-...
  1. 下载好数据集,将训练用的CASIA-WebFaces数据集以及评估用的LFW数据集,解压后放在根目录。
  2. 在训练前利用txt_annotation.py文件生成对应的cls_train.txt。
  3. 利用train.py训练facenet模型,训练前,根据自己的需要选择backbone,model_path和backbone一定要对应。
  4. 运行train.py即可开始训练。

评估步骤

  1. 下载好评估数据集,将评估用的LFW数据集,解压后放在根目录
  2. 在eval_LFW.py设置使用的主干特征提取网络和网络权值。
  3. 运行eval_LFW.py来进行模型准确率评估。

Reference

https://github.com/davidsandberg/facenet
https://github.com/timesler/facenet-pytorch

You might also like...
Comments
  • 训练过程经常遇到BrokenPipeError: [Errno 32] Broken pipe

    训练过程经常遇到BrokenPipeError: [Errno 32] Broken pipe

    Epoch 1/100: 100%|██████████| 583/583 [07:36<00:00, 1.07it/s, accuracy=0.89, lr=0.01, total_CE_loss=9.02, total_triple_loss=0.101]Traceback (most recent call last): File "/opt/vitis_ai/conda/envs/vitis-ai-optimizer_pytorch/lib/python3.7/multiprocessing/queues.py", line 242, in _feed send_bytes(obj) File "/opt/vitis_ai/conda/envs/vitis-ai-optimizer_pytorch/lib/python3.7/multiprocessing/connection.py", line 200, in send_bytes self._send_bytes(m[offset:offset + size]) File "/opt/vitis_ai/conda/envs/vitis-ai-optimizer_pytorch/lib/python3.7/multiprocessing/connection.py", line 404, in _send_bytes self._send(header + buf) File "/opt/vitis_ai/conda/envs/vitis-ai-optimizer_pytorch/lib/python3.7/multiprocessing/connection.py", line 368, in _send n = write(self._handle, buf) BrokenPipeError: [Errno 32] Broken pipe

    opened by jia0511 1
  • lfw数据集处理有什么区别? 精度目前97%

    lfw数据集处理有什么区别? 精度目前97%

    使用facenet_mobilenet.pth 在 LFW 数据集上,调整图片大小为 160x160 ,得到了0.97的精度,没有到| 98.23%,而在百度网盘提供的slfw数据上,精度可以到98%, 但是我看网页上提供的数据图片大小是96*112,请问下,LFW处理上应用什么其他方法吗?

    Test Epoch: [5888/6000 (96%)]: : 24it [00:32, 1.34s/it] Accuracy: 0.97383+-0.00675 Best_thresholds: 1.16000 Validation rate: 0.82100+-0.03127 @ FAR=0.00100

    opened by xiaomujiang 1
Releases(v2.0)
Owner
Bubbliiiing
Bubbliiiing
Official implementation of the Neurips 2021 paper Searching Parameterized AP Loss for Object Detection.

Parameterized AP Loss By Chenxin Tao, Zizhang Li, Xizhou Zhu, Gao Huang, Yong Liu, Jifeng Dai This is the official implementation of the Neurips 2021

46 Jul 06, 2022
Theano is a Python library that allows you to define, optimize, and evaluate mathematical expressions involving multi-dimensional arrays efficiently. It can use GPUs and perform efficient symbolic differentiation.

============================================================================================================ `MILA will stop developing Theano https:

9.6k Dec 31, 2022
PyTorch implementation of SampleRNN: An Unconditional End-to-End Neural Audio Generation Model

samplernn-pytorch A PyTorch implementation of SampleRNN: An Unconditional End-to-End Neural Audio Generation Model. It's based on the reference implem

DeepSound 261 Dec 14, 2022
An Unsupervised Detection Framework for Chinese Jargons in the Darknet

An Unsupervised Detection Framework for Chinese Jargons in the Darknet This repo is the Python 3 implementation of 《An Unsupervised Detection Framewor

7 Nov 08, 2022
Implementation for Simple Spectral Graph Convolution in ICLR 2021

Simple Spectral Graph Convolutional Overview This repo contains an example implementation of the Simple Spectral Graph Convolutional (S^2GC) model. Th

allenhaozhu 64 Dec 31, 2022
A novel Engagement Detection with Multi-Task Training (ED-MTT) system

A novel Engagement Detection with Multi-Task Training (ED-MTT) system which minimizes MSE and triplet loss together to determine the engagement level of students in an e-learning environment.

Onur Çopur 12 Nov 11, 2022
Time-Optimal Planning for Quadrotor Waypoint Flight

Time-Optimal Planning for Quadrotor Waypoint Flight This is an example implementation of the paper "Time-Optimal Planning for Quadrotor Waypoint Fligh

Robotics and Perception Group 38 Dec 02, 2022
A PyTorch implementation of "Signed Graph Convolutional Network" (ICDM 2018).

SGCN ⠀ A PyTorch implementation of Signed Graph Convolutional Network (ICDM 2018). Abstract Due to the fact much of today's data can be represented as

Benedek Rozemberczki 251 Nov 30, 2022
PIKA: a lightweight speech processing toolkit based on Pytorch and (Py)Kaldi

PIKA: a lightweight speech processing toolkit based on Pytorch and (Py)Kaldi PIKA is a lightweight speech processing toolkit based on Pytorch and (Py)

336 Nov 25, 2022
Official Pytorch implementation for AAAI2021 paper (RSPNet: Relative Speed Perception for Unsupervised Video Representation Learning)

RSPNet Official Pytorch implementation for AAAI2021 paper "RSPNet: Relative Speed Perception for Unsupervised Video Representation Learning" [Suppleme

35 Jun 24, 2022
Use .csv files to record, play and evaluate motion capture data.

Purpose These scripts allow you to record mocap data to, and play from .csv files. This approach facilitates parsing of body movement data in statisti

21 Dec 12, 2022
SegNet including indices pooling for Semantic Segmentation with tensorflow and keras

SegNet SegNet is a model of semantic segmentation based on Fully Comvolutional Network. This repository contains the implementation of learning and te

Yuta Kamikawa 172 Dec 23, 2022
This repository provides some of the code implemented and the data used for the work proposed in "A Cluster-Based Trip Prediction Graph Neural Network Model for Bike Sharing Systems".

cluster-link-prediction This repository provides some of the code implemented and the data used for the work proposed in "A Cluster-Based Trip Predict

Bárbara 0 Dec 28, 2022
This repository is an open-source implementation of the ICRA 2021 paper: Locus: LiDAR-based Place Recognition using Spatiotemporal Higher-Order Pooling.

Locus This repository is an open-source implementation of the ICRA 2021 paper: Locus: LiDAR-based Place Recognition using Spatiotemporal Higher-Order

Robotics and Autonomous Systems Group 96 Dec 15, 2022
Place holder for HOPE: a human-centric and task-oriented MT evaluation framework using professional post-editing

HOPE: A Task-Oriented and Human-Centric Evaluation Framework Using Professional Post-Editing Towards More Effective MT Evaluation Place holder for dat

Lifeng Han 1 Apr 25, 2022
This package implements THOR: Transformer with Stochastic Experts.

THOR: Transformer with Stochastic Experts This PyTorch package implements Taming Sparsely Activated Transformer with Stochastic Experts. Installation

Microsoft 45 Nov 22, 2022
Attention-based CNN-LSTM and XGBoost hybrid model for stock prediction

Attention-based CNN-LSTM and XGBoost hybrid model for stock prediction Requirements The code has been tested running under Python 3.7.4, with the foll

zshicode 84 Jan 01, 2023
[CVPR 2021] Generative Hierarchical Features from Synthesizing Images

[CVPR 2021] Generative Hierarchical Features from Synthesizing Images

GenForce: May Generative Force Be with You 148 Dec 09, 2022
Run containerized, rootless applications with podman

Why? restrict scope of file system access run any application without root privileges creates usable "Desktop applications" to integrate into your nor

119 Dec 27, 2022
Pytorch implementation of Compressive Transformers, from Deepmind

Compressive Transformer in Pytorch Pytorch implementation of Compressive Transformers, a variant of Transformer-XL with compressed memory for long-ran

Phil Wang 118 Dec 01, 2022