YOLO3 (Detection, Training, and Evaluation)
Dataset and Model
Dataset | mAP | Demo | Config | Model |
---|---|---|---|---|
Kangaroo Detection (1 class) (https://github.com/experiencor/kangaroo) | 95% | https://youtu.be/URO3UDHvoLY | check zoo | http://bit.do/ekQFj |
Raccoon Detection (1 class) (https://github.com/experiencor/raccoon_dataset) | 98% | https://youtu.be/lxLyLIL7OsU | check zoo | http://bit.do/ekQFf |
Red Blood Cell Detection (3 classes) (https://github.com/experiencor/BCCD_Dataset) | 84% | https://imgur.com/a/uJl2lRI | check zoo | http://bit.do/ekQFc |
VOC (20 classes) (http://host.robots.ox.ac.uk/pascal/VOC/voc2012/) | 72% | https://youtu.be/0RmOI6hcfBI | check zoo | http://bit.do/ekQE5 |
Todo list:
- Yolo3 detection
- Yolo3 training (warmup and multi-scale)
- mAP Evaluation
- Multi-GPU training
- Evaluation on VOC
- Evaluation on COCO
- MobileNet, DenseNet, ResNet, and VGG backends
Detection
Grab the pretrained weights of yolo3 from https://pjreddie.com/media/files/yolov3.weights.
python yolo3_one_file_to_detect_them_all.py -w yolo3.weights -i dog.jpg
Training
1. Data preparation
Download the Raccoon dataset from from https://github.com/experiencor/raccoon_dataset.
Organize the dataset into 4 folders:
-
train_image_folder <= the folder that contains the train images.
-
train_annot_folder <= the folder that contains the train annotations in VOC format.
-
valid_image_folder <= the folder that contains the validation images.
-
valid_annot_folder <= the folder that contains the validation annotations in VOC format.
There is a one-to-one correspondence by file name between images and annotations. If the validation set is empty, the training set will be automatically splitted into the training set and validation set using the ratio of 0.8.
2. Edit the configuration file
The configuration file is a json file, which looks like this:
{
"model" : {
"min_input_size": 352,
"max_input_size": 448,
"anchors": [10,13, 16,30, 33,23, 30,61, 62,45, 59,119, 116,90, 156,198, 373,326],
"labels": ["raccoon"]
},
"train": {
"train_image_folder": "/home/andy/data/raccoon_dataset/images/",
"train_annot_folder": "/home/andy/data/raccoon_dataset/anns/",
"train_times": 10, # the number of time to cycle through the training set, useful for small datasets
"pretrained_weights": "", # specify the path of the pretrained weights, but it's fine to start from scratch
"batch_size": 16, # the number of images to read in each batch
"learning_rate": 1e-4, # the base learning rate of the default Adam rate scheduler
"nb_epoch": 50, # number of epoches
"warmup_epochs": 3, # the number of initial epochs during which the sizes of the 5 boxes in each cell is forced to match the sizes of the 5 anchors, this trick seems to improve precision emperically
"ignore_thresh": 0.5,
"gpus": "0,1",
"saved_weights_name": "raccoon.h5",
"debug": true # turn on/off the line that prints current confidence, position, size, class losses and recall
},
"valid": {
"valid_image_folder": "",
"valid_annot_folder": "",
"valid_times": 1
}
}
The labels
setting lists the labels to be trained on. Only images, which has labels being listed, are fed to the network. The rest images are simply ignored. By this way, a Dog Detector can easily be trained using VOC or COCO dataset by setting labels
to ['dog']
.
Download pretrained weights for backend at:
https://1drv.ms/u/s!ApLdDEW3ut5fgQXa7GzSlG-mdza6
This weights must be put in the root folder of the repository. They are the pretrained weights for the backend only and will be loaded during model creation. The code does not work without this weights.
3. Generate anchors for your dataset (optional)
python gen_anchors.py -c config.json
Copy the generated anchors printed on the terminal to the anchors
setting in config.json
.
4. Start the training process
python train.py -c config.json
By the end of this process, the code will write the weights of the best model to file best_weights.h5 (or whatever name specified in the setting "saved_weights_name" in the config.json file). The training process stops when the loss on the validation set is not improved in 3 consecutive epoches.
5. Perform detection using trained weights on image, set of images, video, or webcam
python predict.py -c config.json -i /path/to/image/or/video
It carries out detection on the image and write the image with detected bounding boxes to the same folder.
Evaluation
python evaluate.py -c config.json
Compute the mAP performance of the model defined in saved_weights_name
on the validation dataset defined in valid_image_folder
and valid_annot_folder
.