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Flower Detection with YOLOv5

This is my first deep learning project using YOLOv5. In this project I made deep learning model to detect 2 kind of flower in my house yard. There are 2 types of flowers (hortesia and mavavicus). In total I used 104 images that I took and labelled by my self.

Design

Tech/Framework Used

Installation

To train YOLOv5 model using my dataset

To run my model

git clone [email protected]:ultralytics/yolov5.git
  • Open the yolov5 directory using IDE or code editor and setup the Python environment (I used Python 3.8 and Pycharm Professional Edition as my Python IDE)
  • Get ready with all of the Python librabry that required
pip install -r requirements.txt
  • Download my weights and yaml file from dataset directory
  • Put those files in the yolov5 directory in your local computer
  • Run the detect.py file using my custom weights
python detect.py --weights flower_07042022.pt --source 0  # webcam
                                              img.jpg  # image
                                              vid.mp4  # video
                                              path/  # directory
                                              path/*.jpg  # glob
  • Result file will saved at runs/detect in yolov5 directory