Free Udemy Course: Object Detection & Image Classification with Pytorch & SSD

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Object Detection & Image Classification with Pytorch & SSD
0.0 Video Hours
3 Articles
0 Resources
4.5 Rating

Free Udemy Course Details

Language: English

Instructor: Christ Raharja

Access: Lifetime access with updates

Certificate: Included upon completion

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About This Free Udemy Course

The "Object Detection & Image Classification with Pytorch & SSD" course is thoughtfully crafted to help you gain new skills and deepen your understanding through clear, comprehensive lessons and practical examples. Whether you're just starting out or looking to enhance your expertise, this course offers a structured and interactive learning experience designed to meet your goals.

What You Will Learn in This Free Udemy Course

Throughout this course, you'll explore essential topics that empower you to confidently apply what you've learned. With over 0.0 hours of engaging video lectures, along with 3 informative articles and 0 downloadable resources, you'll have everything you need to succeed and grow your skills.

Learn at Your Own Pace with Free Udemy Courses

Flexibility is at the heart of this course. Access the materials on any device — whether on your desktop, tablet, or smartphone — and learn when it's convenient for you. The course structure allows you to progress at your own speed, making it easy to fit learning into your busy life.

Meet Your Free Udemy Course Instructor

Your guide on this journey is Christ Raharja , seasoned expert with a proven track record of helping students achieve their goals. Learn from their experience and insights, gaining valuable knowledge that goes beyond the textbook.

Free Udemy Course Overview

Object Detection & Image Classification with Pytorch & SSD
Instructors: Christ Raharja
Language: English
Price: Free
Coupon Code: F6ED60E1454A02E918C3
Expires At: July 13, 2025, 12:32 a.m.
Created At: July 13, 2025, 1 a.m.
Is New: No
Is Published: Yes
Is Offered: Yes

Free Udemy Course Description

Welcome to Object Detection & Image Classification with Pytorch & SSD course. This is a comprehensive project based course where you will learn how to build object detection system, manufacturing defect detection system, waste classification system, and broken road segmentation model using Pytorch, Keras, convolutional neural network, U net, YOLOv, single shot detector, and DETR ResNet. This course is a perfect combination between Python and computer vision, making it an ideal opportunity for you to practice your programming skills while improving your technical knowledge in software development. In the introduction session, you will learn the basic fundamentals of object detection and image classification, such as getting to know how each system works step by step. In the next section, you will learn how to find and download datasets from Kaggle, it is a platform that offers a wide range of high quality datasets from various industries. Before starting the project, you will learn the basics of computer vision like activating cameras and processing images using OpenCV. Afterward, we will start the project, firstly, we are going to build object detection system using Faster R CNN, SSD, YOLOv and Detection Transformers ResNet, those are pre trained models that enable you to detect and classify objects without the need to train them using your own data. Following that, we are going to build a manufacturing defect detection model using Keras and Convolutional Neural Network to classify whether a product is defective or in good condition based on image input. This system will enable users to automatically inspect products using camera or uploaded images, reducing the need for manual quality control checks in factories. Then, after that, we are also going to build a waste classification model using Keras and CNN to distinguish between organic and non organic waste. This system will enable users to automate waste sorting for recycling or disposal purposes by analyzing waste images and accurately identifying materials such as plastic bottles, food waste, papers. In the next section, we are going to build a broken road image segmentation model using the U Net architecture, which is widely used for pixel wise image segmentation tasks. This system will enable users to identify damaged or pothole areas on roads from images, which can assist in infrastructure maintenance and smart city planning.Lastly, at the end of the course, we will conduct testing to make sure the model accuracy is high and the system performs as expected. We will test the system using various inputs such as images, short videos, and real time camera feeds to ensure the features are fully functioning.Well, before getting into the course, we need to ask this question to ourselves, why should we build object detection and image classification models? Well, here is my answer, these models help businesses to automate tasks that were once manual and repetitive, reducing dependency on constant human supervision and improving consistency. This technology is very valuable in industries like manufacturing, waste management, agriculture, retail and transportation. By implementing these systems, businesses can significantly reduce human error and increase processing speed. This will lead to greater efficiency and cost saving.Below are things that you can expect to learn from this course:Learn the basic fundamentals of object detection and image classificationLearn how object detection system works, starting from input image processing, feature extraction, region proposal, bounding box, class prediction, and post processingLearn how image classification system works starting from data collection, labelling, preprocessing, model selection, training, validation, finetuning, and predicting new imageLearn how to activate camera using OpenCVLearn how to build object detection system using Pytorch and SSDLearn how to build object detection system using Pytorch and Faster R-CNNLearn how to build object detection system using YOLOvLearn how to build object detection system using DETR ResNetLearn how to build manufacturing defect detection model using Keras and Convolutional Neural NetworkLearn how to build manufacturing defect detection system using OpenCVLearn how to build waste classification model using Keras and Convolutional Neural NetworkLearn how to build waste classification system using OpenCVLearn how to build broken road image segmentation model using UnetLearn how to build broken road detection system using OpenCVLearn how to test object detection and image classification systems using variety of inputs like images and videos

Video Hours: 0.0
Articles: 3
Resources: 0
Rating: 4.5
Students Enrolled: 33
Mobile Access: Yes
Certificate Included: Yes
Full Lifetime Access: Yes

Frequently Asked Questions About Free Udemy Courses

What is this Free Udemy course about?

The Object Detection & Image Classification with Pytorch & SSD course provides comprehensive training designed to help you gain practical skills and deep knowledge in its subject area. It includes 0.0 hours of video content, 3 articles, and 0 downloadable resources.

Who is this Free Udemy course suitable for?

This course is designed for learners at all levels — whether you're a beginner looking to start fresh or an experienced professional wanting to deepen your expertise. The lessons are structured to be accessible and engaging for everyone.

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Once enrolled, you can access all course materials through the learning platform on any device — including desktop, tablet, and mobile. This allows you to learn at your own pace, anytime and anywhere.

Is there lifetime access to this Free Udemy course?

Yes! Enrolling in the Object Detection & Image Classification with Pytorch & SSD course grants you lifetime access, including any future updates, new lessons, and additional resources added by the instructor.