ultralytics / yolov5

YOLOv5 🚀 in PyTorch > ONNX > CoreML > TFLite
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Yolov5 detection on smaller image sizes #9413

Closed NoorAshraf closed 1 year ago

NoorAshraf commented 2 years ago

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Question

My Yolov5 custom model works like a charm when dealing with photos of image size like 320 x 320 but when it comes to detecting small image sizes like 30 x 20 it barely detects anything . How can I make it detect such small image sizes?

Additional

The trained custom model was trained on image size 640 and 300 epochs . My application detects the motion of the object crops it and then apply yolov5 on that cropped image.

github-actions[bot] commented 2 years ago

👋 Hello @NoorAshraf, 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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Requirements

Python>=3.7.0 with all requirements.txt installed including PyTorch>=1.7. To get started:

git clone https://github.com/ultralytics/yolov5  # clone
cd yolov5
pip install -r requirements.txt  # install

Environments

YOLOv5 may be run in any of the following up-to-date verified environments (with all dependencies including CUDA/CUDNN, Python and PyTorch preinstalled):

Status

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If this badge is green, all YOLOv5 GitHub Actions Continuous Integration (CI) tests are currently passing. CI tests verify correct operation of YOLOv5 training (train.py), validation (val.py), inference (detect.py) and export (export.py) on macOS, Windows, and Ubuntu every 24 hours and on every commit.

glenn-jocher commented 2 years ago

@NoorAshraf 👋 Hello! Thanks for asking about improving YOLOv5 🚀 training results.

Most of the time good results can be obtained with no changes to the models or training settings, provided your dataset is sufficiently large and well labelled. If at first you don't get good results, there are steps you might be able to take to improve, but we always recommend users first train with all default settings before considering any changes. This helps establish a performance baseline and spot areas for improvement.

If you have questions about your training results we recommend you provide the maximum amount of information possible if you expect a helpful response, including results plots (train losses, val losses, P, R, mAP), PR curve, confusion matrix, training mosaics, test results and dataset statistics images such as labels.png. All of these are located in your project/name directory, typically yolov5/runs/train/exp.

We've put together a full guide for users looking to get the best results on their YOLOv5 trainings below.

Dataset

COCO Analysis

Model Selection

Larger models like YOLOv5x and YOLOv5x6 will produce better results in nearly all cases, but have more parameters, require more CUDA memory to train, and are slower to run. For mobile deployments we recommend YOLOv5s/m, for cloud deployments we recommend YOLOv5l/x. See our README table for a full comparison of all models.

YOLOv5 Models

Training Settings

Before modifying anything, first train with default settings to establish a performance baseline. A full list of train.py settings can be found in the train.py argparser.

Further Reading

If you'd like to know more a good place to start is Karpathy's 'Recipe for Training Neural Networks', which has great ideas for training that apply broadly across all ML domains: http://karpathy.github.io/2019/04/25/recipe/

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

sourestdeeds commented 2 years ago

30x20 is far too small to detect anything, I imagine the first branch might find an object every now and then but you're ultimately asking it to detect objects which are possible 2x2 pixels. I don't think any human can classify an object with such little information either!

If you're passing in cropped images it might be better to use a standard classifier.

github-actions[bot] commented 1 year ago

👋 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.

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glenn-jocher commented 11 months ago

@sourestdeeds thanks for the insight! You bring up valid points about the challenging nature of detecting objects in 30x20 images. Indeed, at that resolution, visual information is extremely limited, making it difficult for any model to identify objects reliably.

Using a standard classifier as an alternative is a good suggestion, especially for such small images. It's important to consider the specific use case and the limitations of the input data when choosing the best approach for object detection or classification.

If you have any further questions or need additional assistance, feel free to ask. Thank you for your valuable input!