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tiny-defect-detection-for-pcb's Introduction

PCB-defect-detection

Note

This project code is forked from https://github.com/DetectionTeamUCAS/FPN_Tensorflow. I have only made minor changes on this wonderful and clear project. Thanks for their perfect code. I can learn and apply it to a new problem. The Chinese blog is: https://blog.csdn.net/dlh_sycamore/article/details/87886198

PCB Defect Dataset

The Open Lab on Human Robot Interaction of Peking University has released the PCB defect dataset. If you need to do experiments on this dataset, please contact the dataset author.

You can download at http://robotics.pkusz.edu.cn/resources/dataset/. or https://www.dropbox.com/s/32kolsaa45z2mpj/PCB_DATASET.zip?dl=0

6 types of defects are made by photoshop, a graphics editor published by Adobe Systems. The defects defined in the dataset are: missing hole, mouse bite, open circuit, short, spur, and spurious copper. For example:

1

Augmented Dataset

However, the defect images of raw dataset are high-resolution. With the respect of such small dataset, data augmentation techniques are adopted before data training. The images are then cropped into 600 × 600 sub-images, forming our training set and testing set with 9920 and 2508 images, respectively. You can download augmented dataset:

(1) For Baiduyun: https://pan.baidu.com/s/1eAxDF4txpgMInxbmNDX0Zw code: a6rh

(2) For Dropbox: https://www.dropbox.com/s/h0f39nyotddibsb/VOC_PCB.zip?dl=0

The augmented dataset contains 10668 images and the corresponding annotation files. If you use our dataset in your paper, please cite our paper.

R. Ding, L. Dai, G. Li and H. Liu, "TDD-net: a tiny defect detection network for printed circuit boards," in CAAI Transactions on Intelligence Technology, vol. 4, no. 2, pp. 110-116, 6 2019, doi: 10.1049/trit.2019.0019.

Some Instructions:

1、If you have questions, please open an issue, I will reply as soon as possible. If you don't have some difficult problem about this project, maybe you don't need to send me an email and add wechat, just open an issue.

2、Of course, if you have other research questions like dataset and defect detection, welcome to send me an email.

3、If you use our code, please access this paper and cite: Ding, Runwei, et al. "TDD-Net: A Tiny Defect Detection Network for Printed Circuit Boards." CAAI Transactions on Intelligence Technology (https://ieeexplore.ieee.org/document/8757220)(2019).

4、Chinese Blog: https://blog.csdn.net/dlh_sycamore/article/details/87886198

Download Model

Please download resnet50_v1resnet101_v1 pre-trained models on Imagenet, put it to $PATH_ROOT/data/pretrained_weights.

My Development Environment

1、python2.7 (anaconda recommend)
2、CUDA Version 8.0.44 , CUDNN=5.1.10
3、opencv(cv2)
4、tfplot
5、tensorflow == 1.121

Compile

cd $PATH_ROOT/libs/box_utils/cython_utils
python setup.py build_ext --inplace

Demo(available)

Then download the corresponding weights:

For Baiduyun: weights. code:shac

For Google driver: weights

And then put the trained weights into

TRAINED_CKPT = os.path.join(ROOT_PATH, 'output/trained_weights')

It depends on your project path. Please read '$PATH_ROOT/libs/configs/cfgs.py'.

cd $PATH_ROOT/tools
python inference.py --data_dir='/PATH/TO/THE/TO/BE/DETECTED/IMAGES/' 
                    --save_dir='/PATH/TO/SAVE/RESULTS/' 
                    --GPU='0'

After running this code, you will get the detected image in your 'save_dir' path.

Why didn't you get the correct output image when run the inference.py?

Note!!! If you didn't load the correct checkpoint but the pretrain model, you need to change the checkpoint file (FPN_Res101_0117_OHEM/checkpoint), because this file contains the wrong path, and you need to change it with your file path!!!

Train

If you want to train your own data, please follow this project: https://github.com/DetectionTeamUCAS/FPN_Tensorflow

1、Select a configuration file in the folder ($PATH_ROOT/libs/configs/) and copy its contents into cfgs.py. Modify parameters (such as CLASS_NUM, DATASET_NAME, VERSION, etc.) in $PATH_ROOT/libs/configs/cfgs.py

2、Generate train and test floder

cd $PATH_ROOT/data/io/  
python divide_data.py 

You should check the image_path and xml_path in the 'divide_data.py'

2、Make tfrecord

(1)Modify parameters (such as VOC_dir, xml_dir, image_dir, dataset, etc.) in $PATH_ROOT/data/io/convert_data_to_tfrecord.py

cd $PATH_ROOT/data/io/  
python convert_data_to_tfrecord.py 

3、Train

cd $PATH_ROOT/tools
python train.py

Eval

cd $PATH_ROOT/tools
python eval.py --eval_imgs='/PATH/TO/THE/TO/BE/EVALED/IMAGES/'  
               --annotation_dir='/PATH/TO/TEST/ANNOTATION/'
               --GPU='0'

After running this code, you will get the precision, recall and AP of per defect type.

Some results

the more results 1 2

The Precision and Recall curve (PR)

3

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