Video Instance Segmentation with Python using Deep Learning

Video Instance Segmentation for Computer Vision with Python. Train, Test, Deploy Deep Learning Models YOLOv8, Mask RCNN

Introduction: Step into the dynamic realm of computer vision and get ready to be the maestro of moving pixels! Dive into the world of ‘Video Instance Segmentation with Python Using Deep Learning.’ Unleash the magic hidden in each frame, master the art of dynamic storytelling, and decode the dance of pixels with the latest in deep learning techniques. This course is your passport to unlocking the secrets hidden within the pixels of moving images. Whether you’re a novice or an enthusiast eager to delve into the intricacies of video analysis, this journey promises to demystify the world of deep learning in the context of dynamic visual narratives.

What you’ll learn

  • Real-Time Video Instance Segmentation with Python and Pytorch using Deep Learning.
  • Build, Train, & Test Deep Learning Models on Custom Data & Deploy to Your Own Projects.
  • Introduction to YOLOv8 and its Deep Learning Architecture.
  • Video Instance Segmentation using YOLOv8 with Python.
  • Introduction to Mask RCNN and its Deep Learning Architecture.
  • Instance Segmentation using Mask RCNN with Python.
  • Configuration of Custom Vehicles Dataset with Annotations for Instance Segmentation.
  • HyperParameters Settings for Training Instance Segmentation Models.
  • Training Instance Segmentation YOLOv8 and Mask RCNN Models on Custom Datasets.
  • Testing Instance Segmentation Trained Models on Videos and Images.
  • Perform Car, Motorbike, and Truck Instance Segmentation.
  • Deploy Trained Instance Segmentation Models.

Course Content

  • Introduction to Course –> 1 lecture • 4min.
  • What is Video Instance Segmentation –> 2 lectures • 11min.
  • Introduction to YOLO and its Architecture –> 1 lecture • 6min.
  • YOLOv8 for Real-time Video Instance Segmentation –> 1 lecture • 14min.
  • Vehicles Instance Segmentation Dataset –> 2 lectures • 5min.
  • Google Colab for Writing Python Code –> 2 lectures • 8min.
  • HyperParameters for Training Instance Segmentation Model –> 1 lecture • 7min.
  • Training Instance Segmentation YOLOv8 on Vehicles Data –> 1 lecture • 6min.
  • Testing Segmentation YOLOv8 on Videos and Images –> 2 lectures • 9min.
  • Deploy Trained Instance Segmentation Model –> 1 lecture • 3min.
  • Resources: YOLOv8 Complete Code and Segmentation Dataset –> 1 lecture • 1min.
  • Overview of CNN, RCNN, Fast RCNN, and Faster RCNN –> 1 lecture • 25min.
  • Mask RCNN for Instance Segmentation –> 1 lecture • 4min.
  • Get Started with PyTorch Facebook Library –> 1 lecture • 11min.
  • Custom Dataset for Instance Segmentation –> 1 lecture • 12min.
  • Train, Evaluate & Visualize Instance Segmentation on Custom Dataset –> 1 lecture • 18min.
  • Resources: Mask RCNN Complete Code and Segmentation Dataset –> 1 lecture • 1min.
  • Bonus Lecture –> 1 lecture • 1min.

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Introduction: Step into the dynamic realm of computer vision and get ready to be the maestro of moving pixels! Dive into the world of ‘Video Instance Segmentation with Python Using Deep Learning.’ Unleash the magic hidden in each frame, master the art of dynamic storytelling, and decode the dance of pixels with the latest in deep learning techniques. This course is your passport to unlocking the secrets hidden within the pixels of moving images. Whether you’re a novice or an enthusiast eager to delve into the intricacies of video analysis, this journey promises to demystify the world of deep learning in the context of dynamic visual narratives.

Instance segmentation is a computer vision task to detect and segment individual objects at a pixel level. Unlike semantic segmentation, which assigns a class label to each pixel without distinguishing between object instances, instance segmentation aims to differentiate between each unique object instance in the image. Instance segmentation is a computer vision task to detect and segment individual objects at a pixel level. Instance segmentation goes a step further than object detection and involves identifying individual objects and segment them from the rest of the region. The output of an instance segmentation model is a set of masks or contours that outline each object in the image, along with class labels and confidence scores for each object. Instance segmentation is useful when you need to know not only where objects are in an image, but also what their exact shape is. So, Instance segmentation provides a more detailed understanding of the scene by recognizing and differentiating between specific instances of objects. This fine-grained recognition is essential in applications where precise object localization is required. For example In the context of autonomous vehicles, instance segmentation is valuable for understanding the surrounding environment. It helps in identifying and tracking pedestrians, vehicles, and other obstacles with high precision, contributing to safe navigation.

Deep learning is one of the most effective approach to Instance segmentation, which involves training a neural network to learn complex relationships between pixels and able to learn rich feature representations. The goal of Instance segmentation is to train a Deep Learning model which can look at the image of multiple objects and able to detect and recognize individual objects at pixel level. In this course, you will perform real time video Instance segmentation with latest YOLO8 which is a deep CNN and you will also do instance segmentation using Mask RCNN which is a region based CNN.

Importance: Understanding video instance segmentation is at the forefront of technological innovation. It goes beyond mere object detection, offering a pixel-level understanding of each object’s motion and shape over time. The importance of this skill extends across industries, influencing advancements in robotics, autonomous systems, healthcare, entertainment, and more.

Applications:

  • Surveillance and Security: Contribute to the development of advanced security systems by mastering video instance segmentation for accurate object identification.
  • Autonomous Systems: Enhance your skills for applications like self-driving cars and drones, where precise object tracking is crucial for decision-making.
  • Medical Imaging: Dive into the medical field, where pixel-level understanding in video sequences aids in precise localization and tracking for diagnostic purposes.
  • Entertainment Industry: Join the league of creators in the entertainment industry, mastering the art of visually engaging effects through detailed object segmentation in videos.

Course Key Objectives:

In this course, You will follow a complete pipeline for real time video instance segmentation:

  • Real-Time Video Instance Segmentation with Python and Pytorch using Deep Learning
  • Build, Train, & Test Deep Learning Models on Custom Data & Deploy to Your Own Projects
  • Introduction to YOLOv8 and its Deep Learning Architecture
  • Introduction to Mask RCNN and its Deep Learning Architecture
  • Video Instance Segmentation using YOLOv8 with Python
  • Instance Segmentation using Mask RCNN with Python
  • Configuration of Custom Vehicles Dataset with Annotations for Instance Segmentation
  • HyperParameters Settings for Training Instance Segmentation Models
  • Training Instance Segmentation YOLOv8 and Mask RCNN Models on Custom Datasets
  • Testing  Instance Segmentation Trained Models on Videos and Images
  • Perform Car, Motorbike, and Truck Instance Segmentation
  • Deploy Trained Instance Segmentation Models

So, Are you ready to take your understanding of deep learning to the next level and learn how to apply it to real-world problems? This course is especially designed to give you hands-on experience using Python and Pytorch to build, train and Test deep learning models for Instance segmentation applications.“ At the end of this course, you will be able to perform real time video instance segmentation to your own real word problem on custom datasets using Python. Acquire hands-on experience with Python and deep learning frameworks, gaining a skill set that’s in high demand across industries. Become a visual storyteller, interpreting the language of pixels in moving images. Seize the opportunity to be at the forefront of technological advancements and make a lasting impact in fields where video analysis is the key to unlocking the future.

Embark on this learning journey, where the fusion of Python, deep learning, and video instance segmentation awaits your exploration. Don’t miss your chance to be a part of this transformative experience. Enroll now and turn your passion into expertise!

 

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