YOLOV5 semi-automatic annotation tool (Based on labelImg)
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Updated
Jun 22, 2023 - Python
YOLOV5 semi-automatic annotation tool (Based on labelImg)
Yolo (Real time object detection) model training tutorial with deep learning neural networks
Tensorflow implementation of crowd counting using CNNs from overhead surveillance cameras.
Etiketai is an online tool designed to label images, useful for training AI models
💥一个专为视觉方向目标检测全流程的标注工具集,全称:Kill Object Detection Annotation Tools。
A self automatically labeling tool
tensorflow object detection api helper tool ( custom object detection )
Make custom objects dataset and detect them using darkflow. Darkflow is a tensorflow translation of Darknet.
In this project, I aim to raise people's awareness and encourage them to recycle so that the oceans, seas, or the environment do not become more polluted and damaged in our increasingly polluted world. This project is aimed to detect recyclable objects such as cardboard, paper, plastic, and metal with the help of artificial intelligence and to f…
This project uses computer vision techniques to detect objects on a chessboard. The data are converted into an 8x8 numpy matrix which is passed to the minimax algorithm to suggest a move.
Use this tool to label forms, bounding boxes, and assigning types to annotations
YOLOv3 - Neural Networks for Object Detection in satellite Imagery.
A useful script for converting voc format annotations(generated by LabelImg or Labelme) to coco format annotations
Spothole Core Backend (Object Detection + Flask API) - Artificial Intelligence Powered Pothole Detection, Reporting and Management Solution
Real-time American Sign Language (ASL) letters detection, via PyTorch, OpenCV, YOLOv5, Roboflow and LabelImg 🤟
Face-mask detection system using YOLOv3 in Keras
Human Recognition and Tracking Bot
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