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Add constant white noise to images #8286

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michelebechini opened this issue Jun 21, 2022 · 5 comments
Closed
1 task done

Add constant white noise to images #8286

michelebechini opened this issue Jun 21, 2022 · 5 comments
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question Further information is requested Stale Stale and schedule for closing soon

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@michelebechini
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Hi! I am wondering on training on a dataset of BW images and, before making them 3-channels images, I would like to add a constant white gaussian noise to all the image loaded. To do that for all the images do I have to modify the function def load_image(self, i) in class LoadImagesAndLabels(Dataset) (line 657 of data loaders.py) or do I have to modify also other code portions?

My idea was to modify the current line 664 im = cv2.imread(f) # BGR with:

im = cv2.imread(f, cv2.IMREAD_GRAYSCALE)) # Grayscale
# add white gaussian noise to get "noised_im"
im = cv2.merge([noised_im, noised_im, noised_im]) #BGR

Could it work?

Thanks in advance!

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@michelebechini michelebechini added the question Further information is requested label Jun 21, 2022
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github-actions bot commented Jun 21, 2022

👋 Hello @michelebechini, thank you for your interest in YOLOv5 🚀! Please visit our ⭐️ Tutorials to get started, where you can find quickstart guides for simple tasks like Custom Data Training all the way to advanced concepts like Hyperparameter Evolution.

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If this is a custom training ❓ Question, please provide as much information as possible, including dataset images, training logs, screenshots, and a public link to online W&B logging if available.

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git clone https://github.com/ultralytics/yolov5  # clone
cd yolov5
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@glenn-jocher
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glenn-jocher commented Jun 21, 2022

@michelebechini 👋 Hello! Thanks for asking about image augmentation. YOLOv5 🚀 applies online imagespace and colorspace augmentations in the trainloader (but not the val_loader) to present a new and unique augmented Mosaic (original image + 3 random images) each time an image is loaded for training. Images are never presented twice in the same way.

YOLOv5 augmentation

Augmentation Hyperparameters

The hyperparameters used to define these augmentations are in your hyperparameter file (default data/hyp.scratch.yaml) defined when training:

python train.py --hyp hyp.scratch-low.yaml

lr0: 0.01 # initial learning rate (SGD=1E-2, Adam=1E-3)
lrf: 0.01 # final OneCycleLR learning rate (lr0 * lrf)
momentum: 0.937 # SGD momentum/Adam beta1
weight_decay: 0.0005 # optimizer weight decay 5e-4
warmup_epochs: 3.0 # warmup epochs (fractions ok)
warmup_momentum: 0.8 # warmup initial momentum
warmup_bias_lr: 0.1 # warmup initial bias lr
box: 0.05 # box loss gain
cls: 0.5 # cls loss gain
cls_pw: 1.0 # cls BCELoss positive_weight
obj: 1.0 # obj loss gain (scale with pixels)
obj_pw: 1.0 # obj BCELoss positive_weight
iou_t: 0.20 # IoU training threshold
anchor_t: 4.0 # anchor-multiple threshold
# anchors: 3 # anchors per output layer (0 to ignore)
fl_gamma: 0.0 # focal loss gamma (efficientDet default gamma=1.5)
hsv_h: 0.015 # image HSV-Hue augmentation (fraction)
hsv_s: 0.7 # image HSV-Saturation augmentation (fraction)
hsv_v: 0.4 # image HSV-Value augmentation (fraction)
degrees: 0.0 # image rotation (+/- deg)
translate: 0.1 # image translation (+/- fraction)
scale: 0.5 # image scale (+/- gain)
shear: 0.0 # image shear (+/- deg)
perspective: 0.0 # image perspective (+/- fraction), range 0-0.001
flipud: 0.0 # image flip up-down (probability)
fliplr: 0.5 # image flip left-right (probability)
mosaic: 1.0 # image mosaic (probability)
mixup: 0.0 # image mixup (probability)
copy_paste: 0.0 # segment copy-paste (probability)

Augmentation Previews

You can view the effect of your augmentation policy in your train_batch*.jpg images once training starts. These images will be in your train logging directory, typically yolov5/runs/train/exp:

train_batch0.jpg shows train batch 0 mosaics and labels:

YOLOv5 Albumentations Integration

YOLOv5 🚀 is now fully integrated with Albumentations, a popular open-source image augmentation package. Now you can train the world's best Vision AI models even better with custom Albumentations 😃!

PR #3882 implements this integration, which will automatically apply Albumentations transforms during YOLOv5 training if albumentations>=1.0.3 is installed in your environment. See #3882 for full details.

Example train_batch0.jpg on COCO128 dataset with Blur, MedianBlur and ToGray. See the YOLOv5 Notebooks to reproduce: Open In Colab Open In Kaggle

Good luck 🍀 and let us know if you have any other questions!

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github-actions bot commented Jul 22, 2022

👋 Hello, this issue has been automatically marked as stale because it has not had recent activity. Please note it will be closed if no further activity occurs.

Access additional YOLOv5 🚀 resources:

Access additional Ultralytics ⚡ resources:

Feel free to inform us of any other issues you discover or feature requests that come to mind in the future. Pull Requests (PRs) are also always welcomed!

Thank you for your contributions to YOLOv5 🚀 and Vision AI ⭐!

@github-actions github-actions bot added the Stale Stale and schedule for closing soon label Jul 22, 2022
@github-actions github-actions bot closed this as completed Aug 1, 2022
@stiv-yakovenko
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yet it doesn't answer the initial question...

@pderrenger
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@stiv-yakovenko i apologize for any confusion. To add white Gaussian noise to your images, you can modify the load_image function as you suggested. Ensure you apply the noise after loading the grayscale image and then merge it into three channels. If you need further assistance, feel free to ask!

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