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Complete Object Detection Using YOLOv7 Project From Scratch

Learn Object Detection Using YOLOv7 from Scratch | Real-Time Object Detection Using YOLOv7 | Object Detection Project
Free tutorial
Rating: 3.8 out of 5 (35 ratings)
6,831 students
49min of on-demand video
English
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Understanding the basics of Roboflow website and Google Colab
Understanding the basics of object detection
Training the YOLOv7 model on the custom dataset, learning about hyperparameters, and monitoring the training process.
Understanding the importance of labeled datasets and learning how to annotate images to train a YOLOv7 model.

Requirements

  • Account In Roboflow Website and Google Colab Website

Description

Learn Object Detection Using YOLOv7 from Scratch | Real-Time Object Detection Using YOLOv7 | Object Detection Project


Course Description:

Welcome to the Object Detection Using YOLOv7 course – your complete step-by-step guide to mastering Object Detection Using YOLOv7 from scratch.

In this course, you will build a real-world Object Detection Using YOLOv7 project that detects and classifies objects in real time. Whether you are a beginner or an experienced developer, this course will teach you everything you need to implement Object Detection Using YOLOv7 using Python and OpenCV.

We’ll begin with setting up the development environment for Object Detection Using YOLOv7, downloading pre-trained models, and understanding how Object Detection Using YOLOv7 works under the hood. Then, we’ll walk through the full implementation pipeline – loading YOLOv7 weights, processing images or video input, drawing bounding boxes, and optimizing detection performance.

By the end of this course, you will have completed a full Object Detection Using YOLOv7 project and gained the skills needed to build your own advanced computer vision applications.


Key Learning Objectives:

  1. Introduction to YOLOv7 and Roboflow:

    • Gain an understanding of the YOLOv7 architecture and the Roboflow platform for seamless dataset preparation.

  2. Setting Up Roboflow Account:

    • Create an account on Roboflow and learn how to use its intuitive interface for dataset organization and preprocessing.

  3. Uploading and Annotating Datasets:

    • Explore the process of uploading datasets to Roboflow and annotating images with bounding boxes for object detection tasks.

  4. Generating YOLO-Compatible Dataset:

    • Understand how to generate YOLO-compatible datasets on Roboflow for efficient integration with YOLOv7.

  5. Exporting Datasets to Google Colab:

    • Learn how to export your prepared dataset from Roboflow and set up a Google Colab notebook for model training.

  6. Installing YOLOv7 on Colab:

    • Execute the necessary commands to install the YOLOv7 repository and dependencies on Google Colab.

  7. Custom Configuration for YOLOv7:

    • Understand how to modify the YOLOv7 configuration files to suit the requirements of your specific object detection task.

  8. Training YOLOv7 on GPU:

    • Utilize the GPU capabilities of Google Colab to train your custom YOLOv7 model efficiently.

  9. Model Evaluation and Export:

    • Evaluate the trained model's performance and export it for further use in inference.

  10. Inference and Object Detection Testing:

    • Use the trained YOLOv7 model to perform object detection on new images or videos and test its accuracy.

  11. Fine-Tuning and Iterative Training:

    • Explore the concept of fine-tuning and iterative training for model improvement.

  12. Project Deployment:

    • Discuss various options for deploying your custom object detection model in real-world scenarios.

Prerequisites:

Participants are expected to have:

  • Basic programming skills in Python.

  • Familiarity with machine learning concepts.

  • A Google account for accessing Google Colab.

Who Should Attend:

  • Students and professionals interested in computer vision and object detection.

  • Data scientists and machine learning practitioners.

  • Individuals wanting hands-on experience with YOLOv7, Roboflow, and Google Colab.

Materials Needed:

  • A computer with internet access.

  • Google account for Colab access.

  • Roboflow account (free tier available).

Assessment:

Participants will be assessed based on the successful completion of hands-on assignments, including dataset preparation, model training, and inference tasks.

Join us on this practical journey and empower yourself to create custom object detection solutions using YOLOv7 with the help of Roboflow and Google Colab

Who this course is for:

  • Computer Science and Engineering Students:
  • Data Science and Machine Learning Enthusiasts:
  • Educators and Trainers:

Instructor

Guiding 100k+ Students to Excellence in Life
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Hi, I'm Arunnachalam R S from India — a Computer Science graduate with a strong passion for Cybersecurity and emerging technologies. I’ve chosen cybersecurity as my professional domain and am deeply committed to staying ahead in this ever-evolving field.


As a tech educator, I enjoy sharing my knowledge about the latest technological advancements, security practices, and innovations in science and IT. My mission is to simplify complex concepts and help learners of all levels gain practical skills they can apply in real-world scenarios.


I’m excited to be part of the Udemy platform, where I can express my passion for technology, contribute to the global learning community, and empower others through quality education.


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