English | Size: 440.66 MB
Genre: eLearning
Learn Object Detection And Recognition Using TensorFlow And Python From Scratch
What you’ll learn
Understand the fundamental concepts of object detection and recognition.
Learn effective techniques for collecting and preprocessing data to create a high-quality dataset for model training.
Review essential Python programming concepts and explore key libraries, including TensorFlow, NumPy, and OpenCV.
Implement an object detection model using TensorFlow, focusing on the architecture and design principles.
Course Title: Object Detection and Recognition Using TensorFlow and Python
Course Description:
Welcome to the Object Detection and Recognition Using TensorFlow and Python course, a hands-on exploration of the dynamic field of computer vision. This comprehensive course is designed for learners seeking to gain practical expertise in building robust object detection and recognition systems using the powerful combination of TensorFlow and Python.
What You Will Learn:
Introduction to Object Detection and Recognition:
Gain a foundational understanding of the principles and applications of object detection and recognition in various domains.
Setting Up Your Python Development Environment:
Configure and set up a Python development environment, ensuring a smooth workflow for your computer vision projects.
Python Basics and Key Libraries:
Review essential Python programming concepts and explore key libraries, including TensorFlow, NumPy, and OpenCV, essential for computer vision projects.
Data Collection and Preprocessing:
Learn effective techniques for collecting and preprocessing data, laying the groundwork for creating a high-quality dataset for model training.
Building an Object Detection Model:
Dive into the architecture and design principles of building an object detection model using TensorFlow, covering key concepts and implementation strategies.
Training the Model:
Understand the process of training your object detection model, optimizing it for accuracy and efficiency through hands-on exercises.
Integration with OpenCV:
Integrate your trained model with OpenCV to create real-time object detection and recognition applications, adding practicality to your skills.
Handling Real-World Challenges:
Address common challenges encountered in object detection, including different object sizes, variations in lighting, and complex backgrounds.
Customizing and Fine-Tuning Models:
Explore advanced techniques for customizing and fine-tuning pre-trained models, tailoring them to specific object detection and recognition tasks.
Ethical Considerations and Best Practices:
Engage in discussions on ethical considerations in computer vision projects and adhere to best practices for responsible development.
Why Enroll:
Hands-On Projects: Engage in practical projects to reinforce your learning through direct application.
Real-World Applications: Acquire skills applicable to real-world scenarios, enhancing your ability to create effective object detection and recognition systems.
Community Support: Join a community of learners, share experiences, and seek assistance from instructors and peers throughout your learning journey.
Embark on this exciting learning journey and become proficient in Object Detection and Recognition Using TensorFlow and Python. Enroll now and elevate your skills in the dynamic world of computer vision!
Who this course is for:
Students and Learners Interested in Computer Vision
Python Enthusiasts and Developers
Professionals Exploring Object Detection Applications
rapidgator.net/file/a6a425af910a8d073e1be769a678634b/UD-Object-Detection-And-Recognition-Using-TensorFlow-And-Python.part1.rar.html
rapidgator.net/file/eaaaaa3f4ae0b39ac931494033243502/UD-Object-Detection-And-Recognition-Using-TensorFlow-And-Python.part2.rar.html
tbit.to/amfrc6es8wfy/UD-Object-Detection-And-Recognition-Using-TensorFlow-And-Python.part1.rar.html
tbit.to/qp90kme4sc80/UD-Object-Detection-And-Recognition-Using-TensorFlow-And-Python.part2.rar.html
If any links die or problem unrar, send request to
forms.gle/e557HbjJ5vatekDV9