What you’ll learn
- Train Custom Image Classification Models from Scratch & Convert models into Android compatible tensorflow lite format
- Use Custom Image Classification Models in Android with Images and Camera Footage
- Collect Datasets for Training Custom Image Classification Models
- Use Transfer Learning to Retrain Existing Image Classification Models and use them in Android
- Train Custom Image Classification Models for Android using Two Different Approaches
This course includes:
- 5 hours on-demand video
- Assignments
- 7 downloadable resources
- Access on mobile and TV
- Full lifetime access
- Certificate of completion
Description
Unlock the full potential of mobile app development with our comprehensive course on training custom image Recognition models and integrating them into Android applications. This course is designed to guide you from the basics of machine learning and deep learning to creating sophisticated, real-time image recognition apps in Android Kotlin.
What You Will Learn:
- Introduction to Machine Learning and Deep Learning: Start with the foundational concepts of machine learning, deep learning, and image Recognition to build a strong base for your journey.
- Dataset Collection: Learn effective methods to collect and prepare datasets for training your image Recognition models.
- Model Training Approaches: Train image Recognition models using two powerful approaches:
- Teachable Machine: A user-friendly platform to create custom models.
- Transfer Learning: Advanced technique to leverage pre-trained models for better accuracy and efficiency.
- Tensorflow Lite Conversion: Convert your trained models into TensorFlow Lite format, making them compatible with mobile applications.
- Android Integration: Seamlessly integrate your models into Android apps:
- Image Recognition : Choose or capture images in Android and use your models for accurate image recognition.
- Real-Time Camera Footage: Display live camera footage in Android, pass frames to your models, and build real-time, intelligent mobile apps.
Projects Included:
- Fruit and Vegetable Classification Model: Create an app that identifies different fruits and vegetables.
- Brain Tumor Classification Model: Develop a model to classify brain tumor images.
- Flower Classification Model: Build a system to recognize various types of flowers.
By the end of this course, you’ll be able to:
- Train custom image Recognition models tailored to your specific needs.
- Seamlessly integrate your models into Android applications built with Kotlin.
- Craft intelligent mobile apps that leverage real-time image recognition functionalities.
So join us to become proficient in Android app development and create cutting-edge mobile apps with image and video recognition capabilities using Kotlin.
Enroll now and start your journey towards mastering Android and Image Recognition .
Who this course is for:
- Beginner Android Developers looking to build Machine Learning Powered Android Apps
- Anyone who want to train Image Classification Models and than use them in Android Apps
- Android Developers looking to enhance their skills by learning to train and use image classification models in Android
How to Get this course FREE?
Get a 100% Discount On Udemy courses by clicking on the Apply Here Button. This Course coupon code is automatically added to the Apply Here Button.
Apply this Coupon: FREEANDROIDML is applied (For 100% Discount)
For Latest Udemy Courses Coupon, Join Our Official Free Telegram Group :https://t.me/freecourseforall
Note: The udemy Courses Will be free for a Maximum of 1000 Learners can use the promo code AND Get this course for 100% Free. After that, you will get this course at a discounted price.
Important Notice and Disclaimer:- CareerBoostZone platform is a free Job Sharing platform for all the Job seekers. We don’t charge any cost and service fee for any job which is posted on our website, neither we have authorized anyone to do the same. Most of the jobs posted over Seekajob are taken from the career pages of the organizations. Jobseekers/Applicants are advised to check all the details when they apply for the job to avoid any inconvenience.